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Zhi Tian Hao Chen Chunhua Shen

Abstract
We propose the first direct end-to-end multi-person pose estimation framework, termed DirectPose. Inspired by recent anchor-free object detectors, which directly regress the two corners of target bounding-boxes, the proposed framework directly predicts instance-aware keypoints for all the instances from a raw input image, eliminating the need for heuristic grouping in bottom-up methods or bounding-box detection and RoI operations in top-down ones. We also propose a novel Keypoint Alignment (KPAlign) mechanism, which overcomes the main difficulty: lack of the alignment between the convolutional features and predictions in this end-to-end framework. KPAlign improves the framework's performance by a large margin while still keeping the framework end-to-end trainable. With the only postprocessing non-maximum suppression (NMS), our proposed framework can detect multi-person keypoints with or without bounding-boxes in a single shot. Experiments demonstrate that the end-to-end paradigm can achieve competitive or better performance than previous strong baselines, in both bottom-up and top-down methods. We hope that our end-to-end approach can provide a new perspective for the human pose estimation task.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| keypoint-detection-on-coco-test-dev | DirectPose (ResNet-101) | AP: 64.8 AP50: 87.8 AP75: 71.1 APL: 71.5 APM: 60.4 |
| pose-estimation-on-coco-test-dev | DirectPose (ResNet-101) | AP: 63.3 AP50: 86.7 AP75: 69.4 APL: 71.2 APM: 57.8 |
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