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Papers/Monocular 3D Human Pose Estimation In The Wild Using Impro...

Monocular 3D Human Pose Estimation In The Wild Using Improved CNN Supervision

Dushyant Mehta, Helge Rhodin, Dan Casas, Pascal Fua, Oleksandr Sotnychenko, Weipeng Xu, Christian Theobalt

2016-11-293D Human Pose EstimationMonocular 3D Human Pose EstimationTransfer LearningPose Estimation
PaperPDF

Abstract

We propose a CNN-based approach for 3D human body pose estimation from single RGB images that addresses the issue of limited generalizability of models trained solely on the starkly limited publicly available 3D pose data. Using only the existing 3D pose data and 2D pose data, we show state-of-the-art performance on established benchmarks through transfer of learned features, while also generalizing to in-the-wild scenes. We further introduce a new training set for human body pose estimation from monocular images of real humans that has the ground truth captured with a multi-camera marker-less motion capture system. It complements existing corpora with greater diversity in pose, human appearance, clothing, occlusion, and viewpoints, and enables an increased scope of augmentation. We also contribute a new benchmark that covers outdoor and indoor scenes, and demonstrate that our 3D pose dataset shows better in-the-wild performance than existing annotated data, which is further improved in conjunction with transfer learning from 2D pose data. All in all, we argue that the use of transfer learning of representations in tandem with algorithmic and data contributions is crucial for general 3D body pose estimation.

Results

TaskDatasetMetricValueModel
3D Human Pose EstimationMPI-INF-3DHPAUC39.3Mehta
3D Human Pose EstimationMPI-INF-3DHPMPJPE117.6Mehta
3D Human Pose EstimationMPI-INF-3DHPPCK75.7Mehta
3D Human Pose EstimationMPI-INF-3DHPAUC40.8Mehta
3D Human Pose EstimationMPI-INF-3DHPPCK64.7Mehta
Pose EstimationLeeds Sports PosesPCK75.7Mehta
Pose EstimationMPI-INF-3DHPAUC39.3Mehta
Pose EstimationMPI-INF-3DHPMPJPE117.6Mehta
Pose EstimationMPI-INF-3DHPPCK75.7Mehta
Pose EstimationMPI-INF-3DHPAUC40.8Mehta
Pose EstimationMPI-INF-3DHPPCK64.7Mehta
3DLeeds Sports PosesPCK75.7Mehta
3DMPI-INF-3DHPAUC39.3Mehta
3DMPI-INF-3DHPMPJPE117.6Mehta
3DMPI-INF-3DHPPCK75.7Mehta
3DMPI-INF-3DHPAUC40.8Mehta
3DMPI-INF-3DHPPCK64.7Mehta
1 Image, 2*2 StitchiLeeds Sports PosesPCK75.7Mehta
1 Image, 2*2 StitchiMPI-INF-3DHPAUC39.3Mehta
1 Image, 2*2 StitchiMPI-INF-3DHPMPJPE117.6Mehta
1 Image, 2*2 StitchiMPI-INF-3DHPPCK75.7Mehta
1 Image, 2*2 StitchiMPI-INF-3DHPAUC40.8Mehta
1 Image, 2*2 StitchiMPI-INF-3DHPPCK64.7Mehta

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