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@axel-angel
Last active January 4, 2019 13:26
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Caffe script to compute accuracy and confusion matrix
#!/usr/bin/python
# -*- coding: utf-8 -*-
# Author: Axel Angel, copyright 2015, license GPLv3.
import sys
import caffe
import numpy as np
import lmdb
import argparse
from collections import defaultdict
def flat_shape(x):
"Returns x without singleton dimension, eg: (1,28,28) -> (28,28)"
return x.reshape(filter(lambda s: s > 1, x.shape))
def lmdb_reader(fpath):
import lmdb
lmdb_env = lmdb.open(fpath)
lmdb_txn = lmdb_env.begin()
lmdb_cursor = lmdb_txn.cursor()
for key, value in lmdb_cursor:
datum = caffe.proto.caffe_pb2.Datum()
datum.ParseFromString(value)
label = int(datum.label)
image = caffe.io.datum_to_array(datum).astype(np.uint8)
yield (key, flat_shape(image), label)
def leveldb_reader(fpath):
import leveldb
db = leveldb.LevelDB(fpath)
for key, value in db.RangeIter():
datum = caffe.proto.caffe_pb2.Datum()
datum.ParseFromString(value)
label = int(datum.label)
image = caffe.io.datum_to_array(datum).astype(np.uint8)
yield (key, flat_shape(image), label)
def npz_reader(fpath):
npz = np.load(fpath)
xs = npz['arr_0']
ls = npz['arr_1']
for i, (x, l) in enumerate(np.array([ xs, ls ]).T):
yield (i, x, l)
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument('--proto', type=str, required=True)
parser.add_argument('--model', type=str, required=True)
group = parser.add_mutually_exclusive_group(required=True)
group.add_argument('--lmdb', type=str, default=None)
group.add_argument('--leveldb', type=str, default=None)
group.add_argument('--npz', type=str, default=None)
args = parser.parse_args()
count = 0
correct = 0
matrix = defaultdict(int) # (real,pred) -> int
labels_set = set()
net = caffe.Net(args.proto, args.model, caffe.TEST)
caffe.set_mode_cpu()
print "args", vars(args)
if args.lmdb != None:
reader = lmdb_reader(args.lmdb)
if args.leveldb != None:
reader = leveldb_reader(args.leveldb)
if args.npz != None:
reader = npz_reader(args.npz)
for i, image, label in reader:
image_caffe = image.reshape(1, *image.shape)
out = net.forward_all(data=np.asarray([ image_caffe ]))
plabel = int(out['prob'][0].argmax(axis=0))
count += 1
iscorrect = label == plabel
correct += (1 if iscorrect else 0)
matrix[(label, plabel)] += 1
labels_set.update([label, plabel])
if not iscorrect:
print("\rError: i=%s, expected %i but predicted %i" \
% (i, label, plabel))
sys.stdout.write("\rAccuracy: %.1f%%" % (100.*correct/count))
sys.stdout.flush()
print(", %i/%i corrects" % (correct, count))
print ""
print "Confusion matrix:"
print "(r , p) | count"
for l in labels_set:
for pl in labels_set:
print "(%i , %i) | %i" % (l, pl, matrix[(l,pl)])
@tringn
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tringn commented Nov 19, 2018

@axel-angle, thanks for your amazing work.
I am using your script and I got stuck at:

I1119 17:07:53.463573 12920 net.cpp:283] Network initialization done.
args{'proto': 'test.prototxt', 'model': 'models/caffenet_age_train_iter_50000.caffemodel', 'lmdb': 'lmdb_full/age_test_lmdb/', 'leveldb': None, 'npz': None}
Traceback (most recent call last):
  File "convnet_test.py", line 75, in <module>
    for i, image, label in reader:
  File "convnet_test.py", line 28, in lmdb_reader
    yield (key, flat_shape(image), label)
  File "convnet_test.py", line 15, in flat_shape
    return x.reshape(filter(lambda s: s > 1, x.shape))
TypeError: expected sequence object with len >= 0 or a single integer

I used python3 to run. Can u suggest me a solution? Thanks.

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