4.7 Article

Cross-Domain Complementary Learning Using Pose for Multi-Person Part Segmentation

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2020.2995122

Keywords

Training; Labeling; Task analysis; Skeleton; Image segmentation; Pose estimation; Feature extraction; Human parsing; learning from synthetic data; human pose estimation; domain adaptation

Funding

  1. Microsoft Azure+AI, Redmond

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By utilizing skeleton representation, the proposed method effectively bridges the domain gap between synthetic and real data, enabling multi-person part segmentation without human-annotated labels. Leveraging the realistic variations in real data and obtainable labels in synthetic data, the method achieves comparable performance to state-of-the-art approaches without human labeling, and outperforms supervised methods significantly when part labels are available in real images during training.
Supervised deep learning with pixel-wise training labels has great successes on multi-person part segmentation. However, data labeling at pixel-level is very expensive. To solve the problem, people have been exploring to use synthetic data to avoid the data labeling. Although it is easy to generate labels for synthetic data, the results are much worse compared to those using real data and manual labeling. The degradation of the performance is mainly due to the domain gap, i.e., the discrepancy of the pixel value statistics between real and synthetic data. In this paper, we observe that real and synthetic humans both have a skeleton (pose) representation. We found that the skeletons can effectively bridge the synthetic and real domains during the training. Our proposed approach takes advantage of the rich and realistic variations of the real data and the easily obtainable labels of the synthetic data to learn multi-person part segmentation on real images without any human-annotated labels. Through experiments, we show that without any human labeling, our method performs comparably to several state-of-the-art approaches which require human labeling on Pascal-Person-Parts and COCO-DensePose datasets. On the other hand, if part labels are also available in the real-images during training, our method outperforms the supervised state-of-the-art methods by a large margin. We further demonstrate the generalizability of our method on predicting novel keypoints in real images where no real data labels are available for the novel keypoints detection. Code and pre-trained models are available at https://github.com/kevinlin311tw/CDCL-human-part-segmentation.

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