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Multi-Person Pose Estimation with Local Joint-to-Person Associations

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Despite of the recent success of neural networks for human pose estimation, current approaches are limited to pose estimation of a single person and cannot handle humans in groups or crowds. In this work, we propose a method that estimates the poses of multiple persons in an image in which a person can be occluded by another person or might be truncated. To this end, we consider multi-person pose estimation as a joint-to-person association problem. We construct a fully connected graph from a set of detected joint candidates in an image and resolve the joint-to-person association and outlier detection using integer linear programming. Since solving joint-to-person association jointly for all persons in an image is an NP-hard problem and even approximations are expensive, we solve the problem locally for each person. On the challenging MPII Human Pose Dataset for multiple persons, our approach achieves the accuracy of a state-of-the-art method, but it is 6,000 to 19,000 times faster.

Umar Iqbal, Juergen Gall• 2016

Related benchmarks

TaskDatasetResultRank
Human Pose EstimationMPII (test)
Shoulder PCK79.4
314
Multi-person Pose EstimationMPII Multi-Person full (test)
Head Joint Accuracy58.4
47
Multi-person Pose EstimationMulti-Person PoseTrack
Head Accuracy0.505
15
Multi-person Pose EstimationMPII Multi-Person Pose subset of 288 images
Head Accuracy87.7
13
Human Pose EstimationMPII Subset of 288 images (test)
Acc (Head)70
7
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