2D Human Pose Estimation with Explicit Anatomical Keypoints Structure
Constraints
- URL: http://arxiv.org/abs/2212.02163v1
- Date: Mon, 5 Dec 2022 11:01:43 GMT
- Title: 2D Human Pose Estimation with Explicit Anatomical Keypoints Structure
Constraints
- Authors: Zhangjian Ji, Zilong Wang, Ming Zhang, Yapeng Chen, Yuhua Qian
- Abstract summary: We present a novel 2D human pose estimation method with explicit anatomical keypoints structure constraints.
Our proposed model can be plugged in the most existing bottom-up or top-down human pose estimation methods.
Our methods perform favorably against the most existing bottom-up and top-down human pose estimation methods.
- Score: 15.124606575017621
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, human pose estimation mainly focuses on how to design a more
effective and better deep network structure as human features extractor, and
most designed feature extraction networks only introduce the position of each
anatomical keypoint to guide their training process. However, we found that
some human anatomical keypoints kept their topology invariance, which can help
to localize them more accurately when detecting the keypoints on the feature
map. But to the best of our knowledge, there is no literature that has
specifically studied it. Thus, in this paper, we present a novel 2D human pose
estimation method with explicit anatomical keypoints structure constraints,
which introduces the topology constraint term that consisting of the
differences between the distance and direction of the keypoint-to-keypoint and
their groundtruth in the loss object. More importantly, our proposed model can
be plugged in the most existing bottom-up or top-down human pose estimation
methods and improve their performance. The extensive experiments on the
benchmark dataset: COCO keypoint dataset, show that our methods perform
favorably against the most existing bottom-up and top-down human pose
estimation methods, especially for Lite-HRNet, when our model is plugged into
it, its AP scores separately raise by 2.9\% and 3.3\% on COCO val2017 and
test-dev2017 datasets.
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