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FrankMocap: Fast Monocular 3D Hand and Body Motion Capture by Regression and Integration

About

Although the essential nuance of human motion is often conveyed as a combination of body movements and hand gestures, the existing monocular motion capture approaches mostly focus on either body motion capture only ignoring hand parts or hand motion capture only without considering body motion. In this paper, we present FrankMocap, a motion capture system that can estimate both 3D hand and body motion from in-the-wild monocular inputs with faster speed (9.5 fps) and better accuracy than previous work. Our method works in near real-time (9.5 fps) and produces 3D body and hand motion capture outputs as a unified parametric model structure. Our method aims to capture 3D body and hand motion simultaneously from challenging in-the-wild monocular videos. To construct FrankMocap, we build the state-of-the-art monocular 3D "hand" motion capture method by taking the hand part of the whole body parametric model (SMPL-X). Our 3D hand motion capture output can be efficiently integrated to monocular body motion capture output, producing whole body motion results in a unified parrametric model structure. We demonstrate the state-of-the-art performance of our hand motion capture system in public benchmarks, and show the high quality of our whole body motion capture result in various challenging real-world scenes, including a live demo scenario.

Yu Rong, Takaaki Shiratori, Hanbyul Joo• 2020

Related benchmarks

TaskDatasetResultRank
Hand Pose EstimationSTB (Stereo Hand Pose Tracking Benchmark) (val)
3D AUC0.992
9
Hand Pose EstimationRHD (Rendered Hand Dataset) (test)
3D AUC0.934
8
Hand Pose EstimationMPII+NZSL (val)
2D AUC0.655
8
3D Whole-body Pose EstimationGeForce RTX 2080 GPU Speed Benchmark inference
Preprocess FPS35
5
3D Body ReconstructionEHF (test)
W-Body V2V Error63.5
4
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