Keypoint Communities
About
We present a fast bottom-up method that jointly detects over 100 keypoints on humans or objects, also referred to as human/object pose estimation. We model all keypoints belonging to a human or an object -- the pose -- as a graph and leverage insights from community detection to quantify the independence of keypoints. We use a graph centrality measure to assign training weights to different parts of a pose. Our proposed measure quantifies how tightly a keypoint is connected to its neighborhood. Our experiments show that our method outperforms all previous methods for human pose estimation with fine-grained keypoint annotations on the face, the hands and the feet with a total of 133 keypoints. We also show that our method generalizes to car poses.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Whole-body Pose Estimation | COCO-Wholebody 1.0 (val) | Body AP69.6 | 64 | |
| Car Pose Estimation | ApolloCar3D (val) | Detection Rate91.9 | 3 |