Title
Learning to Acquire the Quality of Human Pose Estimation
Abstract
Making human poses serve high-level computer vision tasks such as action recognition, recognizing the quality of estimated poses is of critical importance. Conventionally, the mean confidence of each keypoint is used as pose quality in most human pose estimation frameworks. However, because different types of keypoint are not identical in visibility and size, they should not contribute equally, which produces biased quality scores. In the paper, we propose end-to-end human pose quality learning, which adds a quality prediction block alongside pose regression. The proposed block learns the object keypoint similarity (OKS) between the estimated pose and its corresponding ground truth by sharing the pose features with heatmap regression. The predicted OKS correlates well with pose quality, making the selection of reliable poses straightforward. Moreover, utilizing the learned quality as pose score improves pose estimation performance during COCO AP evaluation, because it ranks more accurate ones high among all pose detections. We conduct extensive experiments based on the three most popular human pose estimation frameworks, including Hourglass, SimpleBaseline and HRNet. Adding the proposed quality learning block is able to consistently bring nearly 1 percent AP improvement on all the frameworks.
Year
DOI
Venue
2021
10.1109/TCSVT.2020.3005522
IEEE Transactions on Circuits and Systems for Video Technology
Keywords
DocType
Volume
Pose estimation,Heating systems,Computational modeling,Task analysis,Detectors,Computer vision,Computer science
Journal
31
Issue
ISSN
Citations 
4
1051-8215
0
PageRank 
References 
Authors
0.34
10
6
Name
Order
Citations
PageRank
Lin Zhao1142.76
Xu, J.28225.60
Chen Gong3376.76
Jian Yang46102339.77
Wangmeng Zuo53833173.11
Xinbo Gao65534344.56