Created
August 13, 2018 03:00
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name: "GeNet" | |
layer { | |
name: "data" | |
type: "Input" | |
top: "data" | |
input_param { | |
shape { | |
dim: 1 | |
dim: 3 | |
dim: 128 | |
dim: 128 | |
} | |
} | |
} | |
layer { | |
name: "conv0_1" | |
type: "Convolution" | |
bottom: "data" | |
top: "conv0_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
param { | |
lr_mult: 1.0 | |
decay_mult: 0.0 | |
} | |
convolution_param { | |
num_output: 5 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "relu0_1" | |
type: "ReLU" | |
bottom: "conv0_1" | |
top: "conv0_1" | |
} | |
layer { | |
name: "pool0_1" | |
type: "Pooling" | |
bottom: "data" | |
top: "pool0_1" | |
pooling_param { | |
pool: MAX | |
kernel_size: 2 | |
stride: 2 | |
} | |
} | |
layer { | |
name: "concat0_1" | |
type: "Concat" | |
bottom: "conv0_1" | |
bottom: "pool0_1" | |
top: "concat0_1" | |
concat_param { | |
axis: 1 | |
} | |
} | |
layer { | |
name: "conv1_0_1" | |
type: "Convolution" | |
bottom: "concat0_1" | |
top: "conv1_0_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu1_0_1" | |
type: "PReLU" | |
bottom: "conv1_0_1" | |
top: "conv1_0_1" | |
} | |
layer { | |
name: "conv1_0_2/dw" | |
type: "Convolution" | |
bottom: "conv1_0_1" | |
top: "conv1_0_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv1_0_3" | |
type: "Convolution" | |
bottom: "conv1_0_2/dw" | |
top: "conv1_0_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "pool1_0_4" | |
type: "Pooling" | |
bottom: "concat0_1" | |
top: "pool1_0_4" | |
pooling_param { | |
pool: MAX | |
kernel_size: 2 | |
stride: 2 | |
} | |
} | |
layer { | |
name: "conv1_0_4" | |
type: "Convolution" | |
bottom: "pool1_0_4" | |
top: "conv1_0_4" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele1_0_4" | |
type: "Eltwise" | |
bottom: "conv1_0_3" | |
bottom: "conv1_0_4" | |
top: "ele1_0_4" | |
} | |
layer { | |
name: "prelu1_0_4" | |
type: "PReLU" | |
bottom: "ele1_0_4" | |
top: "ele1_0_4" | |
} | |
layer { | |
name: "conv1_1_1" | |
type: "Convolution" | |
bottom: "ele1_0_4" | |
top: "conv1_1_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu1_1_1" | |
type: "PReLU" | |
bottom: "conv1_1_1" | |
top: "conv1_1_1" | |
} | |
layer { | |
name: "conv1_1_2/dw" | |
type: "Convolution" | |
bottom: "conv1_1_1" | |
top: "conv1_1_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv1_1_3" | |
type: "Convolution" | |
bottom: "conv1_1_2/dw" | |
top: "conv1_1_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele1_1_4" | |
type: "Eltwise" | |
bottom: "conv1_1_3" | |
bottom: "ele1_0_4" | |
top: "ele1_1_4" | |
} | |
layer { | |
name: "prelu1_1_4" | |
type: "PReLU" | |
bottom: "ele1_1_4" | |
top: "ele1_1_4" | |
} | |
layer { | |
name: "conv1_2_1" | |
type: "Convolution" | |
bottom: "ele1_1_4" | |
top: "conv1_2_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu1_2_1" | |
type: "PReLU" | |
bottom: "conv1_2_1" | |
top: "conv1_2_1" | |
} | |
layer { | |
name: "conv1_2_2/dw" | |
type: "Convolution" | |
bottom: "conv1_2_1" | |
top: "conv1_2_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv1_2_3" | |
type: "Convolution" | |
bottom: "conv1_2_2/dw" | |
top: "conv1_2_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele1_2_4" | |
type: "Eltwise" | |
bottom: "conv1_2_3" | |
bottom: "ele1_1_4" | |
top: "ele1_2_4" | |
} | |
layer { | |
name: "prelu1_2_4" | |
type: "PReLU" | |
bottom: "ele1_2_4" | |
top: "ele1_2_4" | |
} | |
layer { | |
name: "conv1_3_1" | |
type: "Convolution" | |
bottom: "ele1_2_4" | |
top: "conv1_3_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu1_3_1" | |
type: "PReLU" | |
bottom: "conv1_3_1" | |
top: "conv1_3_1" | |
} | |
layer { | |
name: "conv1_3_2/dw" | |
type: "Convolution" | |
bottom: "conv1_3_1" | |
top: "conv1_3_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv1_3_3" | |
type: "Convolution" | |
bottom: "conv1_3_2/dw" | |
top: "conv1_3_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele1_3_4" | |
type: "Eltwise" | |
bottom: "conv1_3_3" | |
bottom: "ele1_2_4" | |
top: "ele1_3_4" | |
} | |
layer { | |
name: "prelu1_3_4" | |
type: "PReLU" | |
bottom: "ele1_3_4" | |
top: "ele1_3_4" | |
} | |
layer { | |
name: "conv1_4_1" | |
type: "Convolution" | |
bottom: "ele1_3_4" | |
top: "conv1_4_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu1_4_1" | |
type: "PReLU" | |
bottom: "conv1_4_1" | |
top: "conv1_4_1" | |
} | |
layer { | |
name: "conv1_4_2/dw" | |
type: "Convolution" | |
bottom: "conv1_4_1" | |
top: "conv1_4_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv1_4_3" | |
type: "Convolution" | |
bottom: "conv1_4_2/dw" | |
top: "conv1_4_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele1_4_4" | |
type: "Eltwise" | |
bottom: "conv1_4_3" | |
bottom: "ele1_3_4" | |
top: "ele1_4_4" | |
} | |
layer { | |
name: "prelu1_4_4" | |
type: "PReLU" | |
bottom: "ele1_4_4" | |
top: "ele1_4_4" | |
} | |
layer { | |
name: "conv2_0_1" | |
type: "Convolution" | |
bottom: "ele1_4_4" | |
top: "conv2_0_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_0_1" | |
type: "PReLU" | |
bottom: "conv2_0_1" | |
top: "conv2_0_1" | |
} | |
layer { | |
name: "conv2_0_2/dw" | |
type: "Convolution" | |
bottom: "conv2_0_1" | |
top: "conv2_0_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 16 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv2_0_3" | |
type: "Convolution" | |
bottom: "conv2_0_2/dw" | |
top: "conv2_0_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "pool2_0_4" | |
type: "Pooling" | |
bottom: "ele1_4_4" | |
top: "pool2_0_4" | |
pooling_param { | |
pool: MAX | |
kernel_size: 2 | |
stride: 2 | |
} | |
} | |
layer { | |
name: "conv2_0_4" | |
type: "Convolution" | |
bottom: "pool2_0_4" | |
top: "conv2_0_4" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_0_4" | |
type: "Eltwise" | |
bottom: "conv2_0_3" | |
bottom: "conv2_0_4" | |
top: "ele2_0_4" | |
} | |
layer { | |
name: "prelu2_0_4" | |
type: "PReLU" | |
bottom: "ele2_0_4" | |
top: "ele2_0_4" | |
} | |
layer { | |
name: "conv2_1_1" | |
type: "Convolution" | |
bottom: "ele2_0_4" | |
top: "conv2_1_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_1_1" | |
type: "PReLU" | |
bottom: "conv2_1_1" | |
top: "conv2_1_1" | |
} | |
layer { | |
name: "conv2_1_2/dw" | |
type: "Convolution" | |
bottom: "conv2_1_1" | |
top: "conv2_1_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 16 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv2_1_3" | |
type: "Convolution" | |
bottom: "conv2_1_2/dw" | |
top: "conv2_1_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_1_4" | |
type: "Eltwise" | |
bottom: "conv2_1_3" | |
bottom: "ele2_0_4" | |
top: "ele2_1_4" | |
} | |
layer { | |
name: "prelu2_1_4" | |
type: "PReLU" | |
bottom: "ele2_1_4" | |
top: "ele2_1_4" | |
} | |
layer { | |
name: "conv2_2_1" | |
type: "Convolution" | |
bottom: "ele2_1_4" | |
top: "conv2_2_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_2_1" | |
type: "PReLU" | |
bottom: "conv2_2_1" | |
top: "conv2_2_1" | |
} | |
layer { | |
name: "dilconv2_2_2" | |
type: "Convolution" | |
bottom: "conv2_2_1" | |
top: "dilconv2_2_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 2 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 2 | |
} | |
} | |
layer { | |
name: "prelu2_2_2" | |
type: "PReLU" | |
bottom: "dilconv2_2_2" | |
top: "dilconv2_2_2" | |
} | |
layer { | |
name: "conv2_2_3" | |
type: "Convolution" | |
bottom: "dilconv2_2_2" | |
top: "conv2_2_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_2_4" | |
type: "Eltwise" | |
bottom: "conv2_2_3" | |
bottom: "ele2_1_4" | |
top: "ele2_2_4" | |
} | |
layer { | |
name: "prelu2_2_4" | |
type: "PReLU" | |
bottom: "ele2_2_4" | |
top: "ele2_2_4" | |
} | |
layer { | |
name: "conv2_3_1" | |
type: "Convolution" | |
bottom: "ele2_2_4" | |
top: "conv2_3_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_3_1" | |
type: "PReLU" | |
bottom: "conv2_3_1" | |
top: "conv2_3_1" | |
} | |
layer { | |
name: "asymconv2_3_2/y" | |
type: "Convolution" | |
bottom: "conv2_3_1" | |
top: "asymconv2_3_2/y" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: false | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
kernel_h: 5 | |
kernel_w: 1 | |
} | |
} | |
layer { | |
name: "asymconv2_3_2/x" | |
type: "Convolution" | |
bottom: "asymconv2_3_2/y" | |
top: "asymconv2_3_2/x" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
kernel_h: 1 | |
kernel_w: 5 | |
} | |
} | |
layer { | |
name: "prelu2_3_2" | |
type: "PReLU" | |
bottom: "asymconv2_3_2/x" | |
top: "asymconv2_3_2/x" | |
} | |
layer { | |
name: "conv2_3_3" | |
type: "Convolution" | |
bottom: "asymconv2_3_2/x" | |
top: "conv2_3_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_3_4" | |
type: "Eltwise" | |
bottom: "conv2_3_3" | |
bottom: "ele2_2_4" | |
top: "ele2_3_4" | |
} | |
layer { | |
name: "prelu2_3_4" | |
type: "PReLU" | |
bottom: "ele2_3_4" | |
top: "ele2_3_4" | |
} | |
layer { | |
name: "conv2_4_1" | |
type: "Convolution" | |
bottom: "ele2_3_4" | |
top: "conv2_4_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_4_1" | |
type: "PReLU" | |
bottom: "conv2_4_1" | |
top: "conv2_4_1" | |
} | |
layer { | |
name: "dilconv2_4_2" | |
type: "Convolution" | |
bottom: "conv2_4_1" | |
top: "dilconv2_4_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 4 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 4 | |
} | |
} | |
layer { | |
name: "prelu2_4_2" | |
type: "PReLU" | |
bottom: "dilconv2_4_2" | |
top: "dilconv2_4_2" | |
} | |
layer { | |
name: "conv2_4_3" | |
type: "Convolution" | |
bottom: "dilconv2_4_2" | |
top: "conv2_4_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_4_4" | |
type: "Eltwise" | |
bottom: "conv2_4_3" | |
bottom: "ele2_3_4" | |
top: "ele2_4_4" | |
} | |
layer { | |
name: "prelu2_4_4" | |
type: "PReLU" | |
bottom: "ele2_4_4" | |
top: "ele2_4_4" | |
} | |
layer { | |
name: "conv2_5_1" | |
type: "Convolution" | |
bottom: "ele2_4_4" | |
top: "conv2_5_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_5_1" | |
type: "PReLU" | |
bottom: "conv2_5_1" | |
top: "conv2_5_1" | |
} | |
layer { | |
name: "conv2_5_2/dw" | |
type: "Convolution" | |
bottom: "conv2_5_1" | |
top: "conv2_5_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 16 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv2_5_3" | |
type: "Convolution" | |
bottom: "conv2_5_2/dw" | |
top: "conv2_5_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_5_4" | |
type: "Eltwise" | |
bottom: "conv2_5_3" | |
bottom: "ele2_4_4" | |
top: "ele2_5_4" | |
} | |
layer { | |
name: "prelu2_5_4" | |
type: "PReLU" | |
bottom: "ele2_5_4" | |
top: "ele2_5_4" | |
} | |
layer { | |
name: "conv2_6_1" | |
type: "Convolution" | |
bottom: "ele2_5_4" | |
top: "conv2_6_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_6_1" | |
type: "PReLU" | |
bottom: "conv2_6_1" | |
top: "conv2_6_1" | |
} | |
layer { | |
name: "dilconv2_6_2" | |
type: "Convolution" | |
bottom: "conv2_6_1" | |
top: "dilconv2_6_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 8 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 8 | |
} | |
} | |
layer { | |
name: "prelu2_6_2" | |
type: "PReLU" | |
bottom: "dilconv2_6_2" | |
top: "dilconv2_6_2" | |
} | |
layer { | |
name: "conv2_6_3" | |
type: "Convolution" | |
bottom: "dilconv2_6_2" | |
top: "conv2_6_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_6_4" | |
type: "Eltwise" | |
bottom: "conv2_6_3" | |
bottom: "ele2_5_4" | |
top: "ele2_6_4" | |
} | |
layer { | |
name: "prelu2_6_4" | |
type: "PReLU" | |
bottom: "ele2_6_4" | |
top: "ele2_6_4" | |
} | |
layer { | |
name: "conv2_7_1" | |
type: "Convolution" | |
bottom: "ele2_6_4" | |
top: "conv2_7_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_7_1" | |
type: "PReLU" | |
bottom: "conv2_7_1" | |
top: "conv2_7_1" | |
} | |
layer { | |
name: "asymconv2_7_2/y" | |
type: "Convolution" | |
bottom: "conv2_7_1" | |
top: "asymconv2_7_2/y" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: false | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
kernel_h: 5 | |
kernel_w: 1 | |
} | |
} | |
layer { | |
name: "asymconv2_7_2/x" | |
type: "Convolution" | |
bottom: "asymconv2_7_2/y" | |
top: "asymconv2_7_2/x" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
kernel_h: 1 | |
kernel_w: 5 | |
} | |
} | |
layer { | |
name: "prelu2_7_2" | |
type: "PReLU" | |
bottom: "asymconv2_7_2/x" | |
top: "asymconv2_7_2/x" | |
} | |
layer { | |
name: "conv2_7_3" | |
type: "Convolution" | |
bottom: "asymconv2_7_2/x" | |
top: "conv2_7_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_7_4" | |
type: "Eltwise" | |
bottom: "conv2_7_3" | |
bottom: "ele2_6_4" | |
top: "ele2_7_4" | |
} | |
layer { | |
name: "prelu2_7_4" | |
type: "PReLU" | |
bottom: "ele2_7_4" | |
top: "ele2_7_4" | |
} | |
layer { | |
name: "conv2_8_1" | |
type: "Convolution" | |
bottom: "ele2_7_4" | |
top: "conv2_8_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu2_8_1" | |
type: "PReLU" | |
bottom: "conv2_8_1" | |
top: "conv2_8_1" | |
} | |
layer { | |
name: "dilconv2_8_2" | |
type: "Convolution" | |
bottom: "conv2_8_1" | |
top: "dilconv2_8_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 16 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 16 | |
} | |
} | |
layer { | |
name: "prelu2_8_2" | |
type: "PReLU" | |
bottom: "dilconv2_8_2" | |
top: "dilconv2_8_2" | |
} | |
layer { | |
name: "conv2_8_3" | |
type: "Convolution" | |
bottom: "dilconv2_8_2" | |
top: "conv2_8_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele2_8_4" | |
type: "Eltwise" | |
bottom: "conv2_8_3" | |
bottom: "ele2_7_4" | |
top: "ele2_8_4" | |
} | |
layer { | |
name: "prelu2_8_4" | |
type: "PReLU" | |
bottom: "ele2_8_4" | |
top: "ele2_8_4" | |
} | |
layer { | |
name: "conv3_1_1" | |
type: "Convolution" | |
bottom: "ele2_8_4" | |
top: "conv3_1_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_1_1" | |
type: "PReLU" | |
bottom: "conv3_1_1" | |
top: "conv3_1_1" | |
} | |
layer { | |
name: "conv3_1_2/dw" | |
type: "Convolution" | |
bottom: "conv3_1_1" | |
top: "conv3_1_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 16 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv3_1_3" | |
type: "Convolution" | |
bottom: "conv3_1_2/dw" | |
top: "conv3_1_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_1_4" | |
type: "Eltwise" | |
bottom: "conv3_1_3" | |
bottom: "ele2_8_4" | |
top: "ele3_1_4" | |
} | |
layer { | |
name: "prelu3_1_4" | |
type: "PReLU" | |
bottom: "ele3_1_4" | |
top: "ele3_1_4" | |
} | |
layer { | |
name: "conv3_2_1" | |
type: "Convolution" | |
bottom: "ele3_1_4" | |
top: "conv3_2_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_2_1" | |
type: "PReLU" | |
bottom: "conv3_2_1" | |
top: "conv3_2_1" | |
} | |
layer { | |
name: "dilconv3_2_2" | |
type: "Convolution" | |
bottom: "conv3_2_1" | |
top: "dilconv3_2_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 2 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 2 | |
} | |
} | |
layer { | |
name: "prelu3_2_2" | |
type: "PReLU" | |
bottom: "dilconv3_2_2" | |
top: "dilconv3_2_2" | |
} | |
layer { | |
name: "conv3_2_3" | |
type: "Convolution" | |
bottom: "dilconv3_2_2" | |
top: "conv3_2_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_2_4" | |
type: "Eltwise" | |
bottom: "conv3_2_3" | |
bottom: "ele3_1_4" | |
top: "ele3_2_4" | |
} | |
layer { | |
name: "prelu3_2_4" | |
type: "PReLU" | |
bottom: "ele3_2_4" | |
top: "ele3_2_4" | |
} | |
layer { | |
name: "conv3_3_1" | |
type: "Convolution" | |
bottom: "ele3_2_4" | |
top: "conv3_3_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_3_1" | |
type: "PReLU" | |
bottom: "conv3_3_1" | |
top: "conv3_3_1" | |
} | |
layer { | |
name: "asymconv3_3_2/y" | |
type: "Convolution" | |
bottom: "conv3_3_1" | |
top: "asymconv3_3_2/y" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: false | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
kernel_h: 5 | |
kernel_w: 1 | |
} | |
} | |
layer { | |
name: "asymconv3_3_2/x" | |
type: "Convolution" | |
bottom: "asymconv3_3_2/y" | |
top: "asymconv3_3_2/x" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
kernel_h: 1 | |
kernel_w: 5 | |
} | |
} | |
layer { | |
name: "prelu3_3_2" | |
type: "PReLU" | |
bottom: "asymconv3_3_2/x" | |
top: "asymconv3_3_2/x" | |
} | |
layer { | |
name: "conv3_3_3" | |
type: "Convolution" | |
bottom: "asymconv3_3_2/x" | |
top: "conv3_3_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_3_4" | |
type: "Eltwise" | |
bottom: "conv3_3_3" | |
bottom: "ele3_2_4" | |
top: "ele3_3_4" | |
} | |
layer { | |
name: "prelu3_3_4" | |
type: "PReLU" | |
bottom: "ele3_3_4" | |
top: "ele3_3_4" | |
} | |
layer { | |
name: "conv3_4_1" | |
type: "Convolution" | |
bottom: "ele3_3_4" | |
top: "conv3_4_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_4_1" | |
type: "PReLU" | |
bottom: "conv3_4_1" | |
top: "conv3_4_1" | |
} | |
layer { | |
name: "dilconv3_4_2" | |
type: "Convolution" | |
bottom: "conv3_4_1" | |
top: "dilconv3_4_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 4 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 4 | |
} | |
} | |
layer { | |
name: "prelu3_4_2" | |
type: "PReLU" | |
bottom: "dilconv3_4_2" | |
top: "dilconv3_4_2" | |
} | |
layer { | |
name: "conv3_4_3" | |
type: "Convolution" | |
bottom: "dilconv3_4_2" | |
top: "conv3_4_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_4_4" | |
type: "Eltwise" | |
bottom: "conv3_4_3" | |
bottom: "ele3_3_4" | |
top: "ele3_4_4" | |
} | |
layer { | |
name: "prelu3_4_4" | |
type: "PReLU" | |
bottom: "ele3_4_4" | |
top: "ele3_4_4" | |
} | |
layer { | |
name: "conv3_5_1" | |
type: "Convolution" | |
bottom: "ele3_4_4" | |
top: "conv3_5_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_5_1" | |
type: "PReLU" | |
bottom: "conv3_5_1" | |
top: "conv3_5_1" | |
} | |
layer { | |
name: "conv3_5_2/dw" | |
type: "Convolution" | |
bottom: "conv3_5_1" | |
top: "conv3_5_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 16 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv3_5_3" | |
type: "Convolution" | |
bottom: "conv3_5_2/dw" | |
top: "conv3_5_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_5_4" | |
type: "Eltwise" | |
bottom: "conv3_5_3" | |
bottom: "ele3_4_4" | |
top: "ele3_5_4" | |
} | |
layer { | |
name: "prelu3_5_4" | |
type: "PReLU" | |
bottom: "ele3_5_4" | |
top: "ele3_5_4" | |
} | |
layer { | |
name: "conv3_6_1" | |
type: "Convolution" | |
bottom: "ele3_5_4" | |
top: "conv3_6_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_6_1" | |
type: "PReLU" | |
bottom: "conv3_6_1" | |
top: "conv3_6_1" | |
} | |
layer { | |
name: "dilconv3_6_2" | |
type: "Convolution" | |
bottom: "conv3_6_1" | |
top: "dilconv3_6_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 8 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 8 | |
} | |
} | |
layer { | |
name: "prelu3_6_2" | |
type: "PReLU" | |
bottom: "dilconv3_6_2" | |
top: "dilconv3_6_2" | |
} | |
layer { | |
name: "conv3_6_3" | |
type: "Convolution" | |
bottom: "dilconv3_6_2" | |
top: "conv3_6_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_6_4" | |
type: "Eltwise" | |
bottom: "conv3_6_3" | |
bottom: "ele3_5_4" | |
top: "ele3_6_4" | |
} | |
layer { | |
name: "prelu3_6_4" | |
type: "PReLU" | |
bottom: "ele3_6_4" | |
top: "ele3_6_4" | |
} | |
layer { | |
name: "conv3_7_1" | |
type: "Convolution" | |
bottom: "ele3_6_4" | |
top: "conv3_7_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_7_1" | |
type: "PReLU" | |
bottom: "conv3_7_1" | |
top: "conv3_7_1" | |
} | |
layer { | |
name: "asymconv3_7_2/y" | |
type: "Convolution" | |
bottom: "conv3_7_1" | |
top: "asymconv3_7_2/y" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: false | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
kernel_h: 5 | |
kernel_w: 1 | |
} | |
} | |
layer { | |
name: "asymconv3_7_2/x" | |
type: "Convolution" | |
bottom: "asymconv3_7_2/y" | |
top: "asymconv3_7_2/x" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
kernel_h: 1 | |
kernel_w: 5 | |
} | |
} | |
layer { | |
name: "prelu3_7_2" | |
type: "PReLU" | |
bottom: "asymconv3_7_2/x" | |
top: "asymconv3_7_2/x" | |
} | |
layer { | |
name: "conv3_7_3" | |
type: "Convolution" | |
bottom: "asymconv3_7_2/x" | |
top: "conv3_7_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_7_4" | |
type: "Eltwise" | |
bottom: "conv3_7_3" | |
bottom: "ele3_6_4" | |
top: "ele3_7_4" | |
} | |
layer { | |
name: "prelu3_7_4" | |
type: "PReLU" | |
bottom: "ele3_7_4" | |
top: "ele3_7_4" | |
} | |
layer { | |
name: "conv3_8_1" | |
type: "Convolution" | |
bottom: "ele3_7_4" | |
top: "conv3_8_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu3_8_1" | |
type: "PReLU" | |
bottom: "conv3_8_1" | |
top: "conv3_8_1" | |
} | |
layer { | |
name: "dilconv3_8_2" | |
type: "Convolution" | |
bottom: "conv3_8_1" | |
top: "dilconv3_8_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 16 | |
bias_term: true | |
pad: 16 | |
kernel_size: 3 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
dilation: 16 | |
} | |
} | |
layer { | |
name: "prelu3_8_2" | |
type: "PReLU" | |
bottom: "dilconv3_8_2" | |
top: "dilconv3_8_2" | |
} | |
layer { | |
name: "conv3_8_3" | |
type: "Convolution" | |
bottom: "dilconv3_8_2" | |
top: "conv3_8_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 64 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele3_8_4" | |
type: "Eltwise" | |
bottom: "conv3_8_3" | |
bottom: "ele3_7_4" | |
top: "ele3_8_4" | |
} | |
layer { | |
name: "prelu3_8_4" | |
type: "PReLU" | |
bottom: "ele3_8_4" | |
top: "ele3_8_4" | |
} | |
layer { | |
name: "conv4_0_1" | |
type: "Convolution" | |
bottom: "ele3_8_4" | |
top: "conv4_0_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu4_0_1" | |
type: "PReLU" | |
bottom: "conv4_0_1" | |
top: "conv4_0_1" | |
} | |
layer { | |
name: "deconv4_0_2" | |
type: "Deconvolution" | |
bottom: "conv4_0_1" | |
top: "deconv4_0_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 2 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu4_0_2" | |
type: "PReLU" | |
bottom: "deconv4_0_2" | |
top: "deconv4_0_2" | |
} | |
layer { | |
name: "conv4_0_3" | |
type: "Convolution" | |
bottom: "deconv4_0_2" | |
top: "conv4_0_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu4_0_4" | |
type: "PReLU" | |
bottom: "conv4_0_3" | |
top: "conv4_0_3" | |
} | |
layer { | |
name: "ele4_0_4" | |
type: "Eltwise" | |
bottom: "conv4_0_3" | |
bottom: "ele1_4_4" | |
top: "ele4_0_4" | |
} | |
layer { | |
name: "conv4_1_1" | |
type: "Convolution" | |
bottom: "ele4_0_4" | |
top: "conv4_1_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu4_1_1" | |
type: "PReLU" | |
bottom: "conv4_1_1" | |
top: "conv4_1_1" | |
} | |
layer { | |
name: "conv4_1_2/dw" | |
type: "Convolution" | |
bottom: "conv4_1_1" | |
top: "conv4_1_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv4_1_3" | |
type: "Convolution" | |
bottom: "conv4_1_2/dw" | |
top: "conv4_1_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele4_1_4" | |
type: "Eltwise" | |
bottom: "conv4_1_3" | |
bottom: "ele4_0_4" | |
top: "ele4_1_4" | |
} | |
layer { | |
name: "prelu4_1_4" | |
type: "PReLU" | |
bottom: "ele4_1_4" | |
top: "ele4_1_4" | |
} | |
layer { | |
name: "conv4_2_1" | |
type: "Convolution" | |
bottom: "ele4_1_4" | |
top: "conv4_2_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu4_2_1" | |
type: "PReLU" | |
bottom: "conv4_2_1" | |
top: "conv4_2_1" | |
} | |
layer { | |
name: "conv4_2_2/dw" | |
type: "Convolution" | |
bottom: "conv4_2_1" | |
top: "conv4_2_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 8 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv4_2_3" | |
type: "Convolution" | |
bottom: "conv4_2_2/dw" | |
top: "conv4_2_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 32 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele4_2_4" | |
type: "Eltwise" | |
bottom: "conv4_2_3" | |
bottom: "ele4_1_4" | |
top: "ele4_2_4" | |
} | |
layer { | |
name: "prelu4_2_4" | |
type: "PReLU" | |
bottom: "ele4_2_4" | |
top: "ele4_2_4" | |
} | |
layer { | |
name: "conv5_0_1" | |
type: "Convolution" | |
bottom: "ele4_2_4" | |
top: "conv5_0_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 2 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu5_0_1" | |
type: "PReLU" | |
bottom: "conv5_0_1" | |
top: "conv5_0_1" | |
} | |
layer { | |
name: "deconv5_0_2" | |
type: "Deconvolution" | |
bottom: "conv5_0_1" | |
top: "deconv5_0_2" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 2 | |
bias_term: true | |
pad: 0 | |
kernel_size: 2 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu5_0_2" | |
type: "PReLU" | |
bottom: "deconv5_0_2" | |
top: "deconv5_0_2" | |
} | |
layer { | |
name: "conv5_0_3" | |
type: "Convolution" | |
bottom: "deconv5_0_2" | |
top: "conv5_0_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu5_0_4" | |
type: "PReLU" | |
bottom: "conv5_0_3" | |
top: "conv5_0_3" | |
} | |
layer { | |
name: "ele5_0_4" | |
type: "Eltwise" | |
bottom: "conv5_0_3" | |
bottom: "concat0_1" | |
top: "ele5_0_4" | |
} | |
layer { | |
name: "conv5_1_1" | |
type: "Convolution" | |
bottom: "ele5_0_4" | |
top: "conv5_1_1" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 2 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "prelu5_1_1" | |
type: "PReLU" | |
bottom: "conv5_1_1" | |
top: "conv5_1_1" | |
} | |
layer { | |
name: "conv5_1_2/dw" | |
type: "Convolution" | |
bottom: "conv5_1_1" | |
top: "conv5_1_2/dw" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 2 | |
bias_term: true | |
pad: 1 | |
kernel_size: 3 | |
group: 2 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "conv5_1_3" | |
type: "Convolution" | |
bottom: "conv5_1_2/dw" | |
top: "conv5_1_3" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 1.0 | |
} | |
convolution_param { | |
num_output: 8 | |
bias_term: true | |
pad: 0 | |
kernel_size: 1 | |
group: 1 | |
stride: 1 | |
weight_filler { | |
type: "msra" | |
} | |
bias_filler { | |
type: "constant" | |
value: 0.0 | |
} | |
} | |
} | |
layer { | |
name: "ele5_1_4" | |
type: "Eltwise" | |
bottom: "conv5_1_3" | |
bottom: "ele5_0_4" | |
top: "ele5_1_4" | |
} | |
layer { | |
name: "prelu5_1_4" | |
type: "PReLU" | |
bottom: "ele5_1_4" | |
top: "ele5_1_4" | |
} | |
layer { | |
name: "deconv_out" | |
type: "Deconvolution" | |
bottom: "ele5_1_4" | |
top: "deconv_out" | |
param { | |
lr_mult: 1.0 | |
decay_mult: 0.0 | |
} | |
convolution_param { | |
num_output: 2 | |
bias_term: true | |
pad: 0 | |
kernel_size: 2 | |
stride: 2 | |
weight_filler { | |
type: "msra" | |
} | |
} | |
} | |
layer { | |
name: "prob" | |
type: "Softmax" | |
bottom: "deconv_out" | |
top: "prob" | |
} |
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