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@travishsu
Last active May 29, 2024 09:13
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Convert COCO format segmentation annotation to LabelMe format
import os
import json
import subprocess
import numpy as np
import pandas as pd
from skimage.measure import find_contours
class CocoDatasetHandler:
def __init__(self, jsonpath, imgpath):
with open(jsonpath, 'r') as jsonfile:
ann = json.load(jsonfile)
images = pd.DataFrame.from_dict(ann['images']).set_index('id')
annotations = pd.DataFrame.from_dict(ann['annotations']).set_index('id')
categories = pd.DataFrame.from_dict(ann['categories']).set_index('id')
annotations = annotations.merge(images, left_on='image_id', right_index=True)
annotations = annotations.merge(categories, left_on='category_id', right_index=True)
annotations = annotations.assign(
shapes=annotations.apply(self.coco2shape, axis=1))
self.annotations = annotations
self.labelme = {}
self.imgpath = imgpath
self.images = pd.DataFrame.from_dict(ann['images']).set_index('file_name')
def coco2shape(self, row):
if row.iscrowd == 1:
shapes = self.rle2shape(row)
elif row.iscrowd == 0:
shapes = self.polygon2shape(row)
return shapes
def rle2shape(self, row):
rle, shape = row['segmentation']['counts'], row['segmentation']['size']
mask = self._rle_decode(rle, shape)
padded_mask = np.zeros(
(mask.shape[0]+2, mask.shape[1]+2),
dtype=np.uint8,
)
padded_mask[1:-1, 1:-1] = mask
points = find_contours(mask, 0.5)
shapes = [
[[int(point[1]), int(point[0])] for point in polygon]
for polygon in points
]
return shapes
def _rle_decode(self, rle, shape):
mask = np.zeros([shape[0] * shape[1]], np.bool)
for idx, r in enumerate(rle):
if idx < 1:
s = 0
else:
s = sum(rle[:idx])
e = s + r
if e == s:
continue
assert 0 <= s < mask.shape[0]
assert 1 <= e <= mask.shape[0], "shape: {} s {} e {} r {}".format(shape, s, e, r)
if idx % 2 == 1:
mask[s:e] = 1
# Reshape and transpose
mask = mask.reshape([shape[1], shape[0]]).T
return mask
def polygon2shape(self, row):
# shapes: (n_polygons, n_points, 2)
shapes = [
[[int(points[2*i]), int(points[2*i+1])] for i in range(len(points)//2)]
for points in row.segmentation
]
return shapes
def coco2labelme(self):
fillColor = [255, 0, 0, 128]
lineColor = [0, 255, 0, 128]
groups = self.annotations.groupby('file_name')
for file_idx, (filename, df) in enumerate(groups):
record = {
'imageData': None,
'fillColor': fillColor,
'lineColor': lineColor,
'imagePath': filename,
'imageHeight': int(self.images.loc[filename].height),
'imageWidth': int(self.images.loc[filename].width),
}
record['shapes'] = []
instance = {
'line_color': None,
'fill_color': None,
'shape_type': "polygon",
}
for inst_idx, (_, row) in enumerate(df.iterrows()):
for polygon in row.shapes:
copy_instance = instance.copy()
copy_instance.update({
'label': row['name'],
'group_id': inst_idx,
'points': polygon
})
record['shapes'].append(copy_instance)
if filename not in self.labelme.keys():
self.labelme[filename] = record
def save_labelme(self, file_names, dirpath, save_json_only=False):
if not os.path.exists(dirpath):
os.makedirs(dirpath)
else:
raise ValueError(f"{dirpath} has existed")
for file in file_names:
filename = os.path.basename(os.path.splitext(file)[0])
with open(os.path.join(dirpath, filename+'.json'), 'w') as jsonfile:
json.dump(self.labelme[file], jsonfile, ensure_ascii=True, indent=2)
if not save_json_only:
subprocess.call(['cp', os.path.join(self.imgpath, file), dirpath])
ds = CocoDatasetHandler('cocodataset/annotations/instances_train2014.json', 'cocodataset/train2014/')
ds.coco2labelme()
ds.save_labelme(ds.labelme.keys(), 'cocodataset/labelme/train2014')
@manaswakchaure
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@travishsu Thank you, sir, for your reply.

I have attached the files here https://drive.google.com/drive/folders/1cvPGxPGLCb-6fbDGVEHPDVX2bxPEvx3m?usp=sharing

Thank you!

@manaswakchaure
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This script might call polygon2shape(L68) since "iscrowd" is 0.

most of my images are crowded so should I fix it to 1? inorder to get the exact mask number?

@travishsu
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Author

Hi @manaswakchaure,

截圖 2022-12-02 上午7 16 00

I found there are multiple lists nested in the value of segmentation so there'll be multiple converted masks for a single instance, and the converted masks will have the same group_id.

Besides, using iscrowd=0 is correct if the value of segmentation is in polygon format instead of RLE format.

@manaswakchaure
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Dear sir,

Thank you so much!

I got it. I made some modifications for getting those multiple masks as one single instance under one grup_id as needed. And verified it!

Thank you so much for your time.

@stphtan94117
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不知道發這邊好不好
想請問作者有考慮新增png to json嗎?
也就是mask.png 轉成 coco.json (png2coco)
我原本參考這位作者的程式碼執行,他的資料集確實可以跑
但用我的資料去跑,產生COCO裡面的segmentatiom的點的座標,有些是負值,導致無法開起來
https://github.com/chrise96/image-to-coco-json-converter

我只有改動這邊,不曉得為何coco點座標會有負值
image

這是我的資料集檔案連結
https://drive.google.com/drive/folders/1butmjjGTgMIEr6bq1nQ3ejjm0M7oN_YR?usp=share_link
謝謝你

@stphtan94117
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你好,我最後查出原因,只有把照片改成JPG即可
但有個極為困難的點,如果圖形是甜甜圈那種形狀,中間需要挖空
似乎coco json無法表示

用實際例子說明,假設有個正方形的農田,正中間有個農舍房子
因此農田polygon要正方形減去正中間農舍
但coco json的polygon的點,是輪廓組成,因此無法形成

不曉得你這邊有無辦法解決重疊的地方把它去除

@travishsu
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Author

Hi @stphtan94117,
我想 png2coco 可能不適合放在這個 coco2labelme 底下。

那位作者用的是多個 polygon 放在同一個 segmentation 且設定 iscrowd 為 0,
但如果有沒辦法用 polygon 表示的 instance,我想你可以考慮用將同一個 instance 的 mask 轉成 RLE format,且讓 iscrowd 設為 1

References

  1. 找mask2rle
  2. COCO Format

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