loliipopshock
commited on
Commit
·
33b3cd5
1
Parent(s):
ea5f6fe
Add the prima conversion script
Browse files- scripts/convert_prima_to_coco.py +225 -0
scripts/convert_prima_to_coco.py
ADDED
@@ -0,0 +1,225 @@
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1 |
+
import os, re, json
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2 |
+
import imagesize
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3 |
+
from glob import glob
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4 |
+
from bs4 import BeautifulSoup
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5 |
+
import numpy as np
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from PIL import Image
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import argparse
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8 |
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from tqdm import tqdm
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import sys
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+
sys.path.append('..')
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+
from utils import cocosplit
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+
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+
class NpEncoder(json.JSONEncoder):
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14 |
+
def default(self, obj):
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if isinstance(obj, np.integer):
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return int(obj)
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elif isinstance(obj, np.floating):
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return float(obj)
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19 |
+
elif isinstance(obj, np.ndarray):
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return obj.tolist()
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else:
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return super(NpEncoder, self).default(obj)
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+
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+
def cvt_coords_to_array(obj):
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+
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return np.array(
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[(float(pt['x']), float(pt['y']))
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for pt in obj.find_all("Point")]
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)
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+
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def cal_ployarea(points):
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32 |
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x = points[:,0]
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33 |
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y = points[:,1]
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return 0.5*np.abs(np.dot(x,np.roll(y,1))-np.dot(y,np.roll(x,1)))
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+
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+
def _create_category(schema=0):
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+
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if schema==0:
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categories = \
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[{"supercategory": "layout", "id": 1, "name": "Background"},
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{"supercategory": "layout", "id": 1, "name": "TextRegion"},
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{"supercategory": "layout", "id": 2, "name": "ImageRegion"},
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{"supercategory": "layout", "id": 3, "name": "TableRegion"},
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{"supercategory": "layout", "id": 4, "name": "MathsRegion"},
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{"supercategory": "layout", "id": 5, "name": "SeparatorRegion"},
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{"supercategory": "layout", "id": 6, "name": "OtherRegion"}]
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48 |
+
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find_categories = lambda name: \
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[val["id"] for val in categories if val['name'] == name][0]
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+
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conversion = \
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{
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'TextRegion': find_categories("TextRegion"),
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55 |
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'TableRegion': find_categories("TableRegion"),
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56 |
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'MathsRegion': find_categories("MathsRegion"),
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57 |
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'ChartRegion': find_categories("ImageRegion"),
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'GraphicRegion': find_categories("ImageRegion"),
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'ImageRegion': find_categories("ImageRegion"),
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'LineDrawingRegion':find_categories("OtherRegion"),
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'SeparatorRegion': find_categories("SeparatorRegion"),
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'NoiseRegion': find_categories("OtherRegion"),
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'FrameRegion': find_categories("OtherRegion"),
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}
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return categories, conversion
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+
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68 |
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_categories, _categories_conversion = _create_category(schema=0)
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+
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70 |
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_info = {
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71 |
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"description": "PRIMA Layout Analysis Dataset",
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72 |
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"url": "https://www.primaresearch.org/datasets/Layout_Analysis",
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73 |
+
"version": "1.0",
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"year": 2010,
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"contributor": "PRIMA Research",
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"date_created": "2020/09/01",
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}
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+
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def _load_soup(filename):
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with open(filename, "r") as fp:
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soup = BeautifulSoup(fp.read(),'xml')
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+
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return soup
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def _image_template(image_id, image_path):
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width, height = imagesize.get(image_path)
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return {
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"file_name": os.path.basename(image_path),
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"height": height,
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"width": width,
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"id": int(image_id)
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}
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def _anno_template(anno_id, image_id, pts, obj_tag):
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+
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x_1, x_2 = pts[:,0].min(), pts[:,0].max()
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y_1, y_2 = pts[:,1].min(), pts[:,1].max()
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height = y_2 - y_1
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width = x_2 - x_1
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return {
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"segmentation": [pts.flatten().tolist()],
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"area": cal_ployarea(pts),
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"iscrowd": 0,
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"image_id": image_id,
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"bbox": [x_1, y_1, width, height],
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"category_id": _categories_conversion[obj_tag],
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"id": anno_id
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}
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+
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+
class PRIMADataset():
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+
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def __init__(self, base_path, anno_path='XML',
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image_path='Images'):
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self.base_path = base_path
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self.anno_path = os.path.join(base_path, anno_path)
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self.image_path = os.path.join(base_path, image_path)
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self._ids = self.find_all_image_ids()
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def __len__(self):
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return len(self.ids)
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def __getitem__(self, idx):
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return self.load_image_and_annotaiton(idx)
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def find_all_annotation_files(self):
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return glob(os.path.join(self.anno_path, '*.xml'))
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+
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def find_all_image_ids(self):
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replacer = lambda s: os.path.basename(s).replace('pc-', '').replace('.xml', '')
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return [replacer(s) for s in self.find_all_annotation_files()]
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+
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def load_image_and_annotaiton(self, idx):
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+
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image_id = self._ids[idx]
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+
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image_path = os.path.join(self.image_path, f'{image_id}.tif')
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image = Image.open(image_path)
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+
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anno = self.load_annotation(idx)
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return image, anno
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+
def load_annotation(self, idx):
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image_id = self._ids[idx]
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+
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anno_path = os.path.join(self.anno_path, f'pc-{image_id}.xml')
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+
# A dirtly hack to load the files w/wo pc- simualtaneously
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153 |
+
if not os.path.exists(anno_path):
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+
anno_path = os.path.join(self.anno_path, f'{image_id}.xml')
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155 |
+
assert os.path.exists(anno_path), "Invalid path"
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156 |
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anno = _load_soup(anno_path)
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return anno
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+
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160 |
+
def convert_to_COCO(self, save_path):
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161 |
+
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162 |
+
all_image_infos = []
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163 |
+
all_anno_infos = []
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164 |
+
anno_id = 0
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165 |
+
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166 |
+
for idx, image_id in enumerate(tqdm(self._ids)):
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167 |
+
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168 |
+
# We use the idx as the image id
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169 |
+
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170 |
+
image_path = os.path.join(self.image_path, f'{image_id}.tif')
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171 |
+
image_info = _image_template(idx, image_path)
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172 |
+
all_image_infos.append(image_info)
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173 |
+
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174 |
+
anno = self.load_annotation(idx)
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175 |
+
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176 |
+
for item in anno.find_all(re.compile(".*Region")):
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177 |
+
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178 |
+
pts = cvt_coords_to_array(item.Coords)
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179 |
+
if 0 not in pts.shape:
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180 |
+
# Sometimes there will be polygons with less
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181 |
+
# than 4 edges, and they could not be appropriately
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182 |
+
# handled by the COCO format. So we just drop them.
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183 |
+
if pts.shape[0] >= 4:
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184 |
+
anno_info = _anno_template(anno_id, idx, pts, item.name)
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185 |
+
all_anno_infos.append(anno_info)
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186 |
+
anno_id += 1
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187 |
+
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188 |
+
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189 |
+
final_annotation = {
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190 |
+
"info": _info,
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191 |
+
"licenses": [],
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192 |
+
"images": all_image_infos,
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193 |
+
"annotations": all_anno_infos,
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194 |
+
"categories": _categories}
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195 |
+
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196 |
+
with open(save_path, 'w') as fp:
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197 |
+
json.dump(final_annotation, fp, cls=NpEncoder)
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198 |
+
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199 |
+
return final_annotation
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200 |
+
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201 |
+
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202 |
+
parser = argparse.ArgumentParser()
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203 |
+
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204 |
+
parser.add_argument('--prima_datapath', type=str, default='./data/prima', help='the path to the prima data folders')
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205 |
+
parser.add_argument('--anno_savepath', type=str, default='./annotations.json', help='the path to save the new annotations')
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206 |
+
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207 |
+
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208 |
+
if __name__ == "__main__":
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209 |
+
args = parser.parse_args()
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210 |
+
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211 |
+
print("Start running the conversion script")
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212 |
+
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213 |
+
print(f"Loading the information from the path {args.prima_datapath}")
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214 |
+
dataset = PRIMADataset(args.prima_datapath)
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215 |
+
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216 |
+
print(f"Saving the annotation to {args.anno_savepath}")
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217 |
+
res = dataset.convert_to_COCO(args.anno_savepath)
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218 |
+
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219 |
+
cocosplit.main(
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220 |
+
args.anno_savepath,
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221 |
+
split_ratio=0.8,
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222 |
+
having_annotations=True,
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223 |
+
train_save_path=args.anno_savepath.replace('.json', '-train.json'),
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224 |
+
test_save_path=args.anno_savepath.replace('.json', '-val.json'),
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225 |
+
random_state=24)
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