Unsupervised Part Segmentation through Disentangling Appearance and Shape

CVPR 2021  ·  Shilong Liu, Lei Zhang, Xiao Yang, Hang Su, Jun Zhu ·

We study the problem of unsupervised discovery and segmentation of object parts, which, as an intermediate local representation, are capable of finding intrinsic object structure and providing more explainable recognition results. Recent unsupervised methods have greatly relaxed the dependency on annotated data which are costly to obtain, but still rely on additional information such as object segmentation mask or saliency map. To remove such a dependency and further improve the part segmentation performance, we develop a novel approach by disentangling the appearance and shape representations of object parts followed with reconstruction losses without using additional object mask information. To avoid degenerated solutions, a bottleneck block is designed to squeeze and expand the appearance representation, leading to a more effective disentanglement between geometry and appearance. Combined with a self-supervised part classification loss and an improved geometry concentration constraint, we can segment more consistent parts with semantic meanings. Comprehensive experiments on a wide variety of objects such as face, bird, and PASCAL VOC objects demonstrate the effectiveness of the proposed method.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Unsupervised Facial Landmark Detection AFLW Unaligned IMM NME 13.31 # 2
Unsupervised Facial Landmark Detection AFLW Unaligned Lorenz2019unsupervised NME 13.6 # 3
Unsupervised Facial Landmark Detection AFLW Unaligned SCOPS NME 16.05 # 4
Unsupervised Facial Landmark Detection AFLW Unaligned UPSDAP NME 13.13 # 1
Unsupervised Facial Landmark Detection MAFL Unaligned UPSDAS NME 12.26 # 5

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