Demo-Maker / modules / rtmpose / configs / hand_2d_keypoint / rtmpose /
@mikado-4410 mikado-4410 authored on 11 Oct 2024
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coco_wholebody_hand [update]RTMposeを用いた検出機能の実装 1 year ago
hand5 [update]RTMposeを用いた検出機能の実装 1 year ago
README.md [update]RTMposeを用いた検出機能の実装 1 year ago
README.md

RTMPose

Recent studies on 2D pose estimation have achieved excellent performance on public benchmarks, yet its application in the industrial community still suffers from heavy model parameters and high latency. In order to bridge this gap, we empirically study five aspects that affect the performance of multi-person pose estimation algorithms: paradigm, backbone network, localization algorithm, training strategy, and deployment inference, and present a high-performance real-time multi-person pose estimation framework, RTMPose, based on MMPose. Our RTMPose-m achieves 75.8% AP on COCO with 90+ FPS on an Intel i7-11700 CPU and 430+ FPS on an NVIDIA GTX 1660 Ti GPU, and RTMPose-l achieves 67.0% AP on COCO-WholeBody with 130+ FPS, outperforming existing open-source libraries. To further evaluate RTMPose's capability in critical real-time applications, we also report the performance after deploying on the mobile device.

Results and Models

COCO-WholeBody-Hand Dataset

Results on COCO-WholeBody-Hand val set

ModelInput SizePCK@0.2AUCEPEDetails and Download
RTMPose-m256x2560.8150.8374.51rtmpose_coco_wholebody_hand.md