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Papers/Recurrent 3D Pose Sequence Machines

Recurrent 3D Pose Sequence Machines

Mude Lin, Liang Lin, Xiaodan Liang, Keze Wang, Hui Cheng

2017-07-31CVPR 2017 73D Human Pose EstimationPose Estimation3D Pose Estimation
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Abstract

3D human articulated pose recovery from monocular image sequences is very challenging due to the diverse appearances, viewpoints, occlusions, and also the human 3D pose is inherently ambiguous from the monocular imagery. It is thus critical to exploit rich spatial and temporal long-range dependencies among body joints for accurate 3D pose sequence prediction. Existing approaches usually manually design some elaborate prior terms and human body kinematic constraints for capturing structures, which are often insufficient to exploit all intrinsic structures and not scalable for all scenarios. In contrast, this paper presents a Recurrent 3D Pose Sequence Machine(RPSM) to automatically learn the image-dependent structural constraint and sequence-dependent temporal context by using a multi-stage sequential refinement. At each stage, our RPSM is composed of three modules to predict the 3D pose sequences based on the previously learned 2D pose representations and 3D poses: (i) a 2D pose module extracting the image-dependent pose representations, (ii) a 3D pose recurrent module regressing 3D poses and (iii) a feature adaption module serving as a bridge between module (i) and (ii) to enable the representation transformation from 2D to 3D domain. These three modules are then assembled into a sequential prediction framework to refine the predicted poses with multiple recurrent stages. Extensive evaluations on the Human3.6M dataset and HumanEva-I dataset show that our RPSM outperforms all state-of-the-art approaches for 3D pose estimation.

Results

TaskDatasetMetricValueModel
3D Human Pose EstimationHumanEva-IMean Reconstruction Error (mm)30.8Recurrent 3D Pose Sequence Machines
Pose EstimationHumanEva-IMean Reconstruction Error (mm)30.8Recurrent 3D Pose Sequence Machines
3DHumanEva-IMean Reconstruction Error (mm)30.8Recurrent 3D Pose Sequence Machines
1 Image, 2*2 StitchiHumanEva-IMean Reconstruction Error (mm)30.8Recurrent 3D Pose Sequence Machines

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