clothing-co-parsing
Clothing Dataset
A dataset and codebase for clothing image segmentation and labeling tasks
CCP dataset from "Clothing Co-Parsing by Joint Image Segmentation and Labeling " (CVPR 2014)
469 stars
14 watching
122 forks
Language: MATLAB
last commit: over 6 years ago
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