Tilting at windmills: Data augmentation for deep pose estimation does
not help with occlusions
International Conference on Pattern Recognition (ICPR), 2020
- 3DPC
Abstract
Occlusion degrades the performance of human pose estimation. In this paper, we introduce targeted keypoint and body part occlusion attacks. The effects of the attacks are systematically analyzed on the best performing methods. In addition, we propose occlusion specific data augmentation techniques against keypoint and part attacks. Our extensive experiments show that human pose estimation methods are not robust to occlusion and data augmentation does not solve the occlusion problems.
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