Single-Stage Multi-Person Pose Machines

Multi-person pose estimation is a challenging problem. Existing methods are mostly two-stage based--one stage for proposal generation and the other for allocating poses to corresponding persons. However, such two-stage methods generally suffer low efficiency. In this work, we present the first single-stage model, Single-stage multi-person Pose Machine (SPM), to simplify the pipeline and lift the efficiency for multi-person pose estimation. To achieve this, we propose a novel Structured Pose Representation (SPR) that unifies person instance and body joint position representations. Based on SPR, we develop the SPM model that can directly predict structured poses for multiple persons in a single stage, and thus offer a more compact pipeline and attractive efficiency advantage over two-stage methods. In particular, SPR introduces the root joints to indicate different person instances and human body joint positions are encoded into their displacements w.r.t. the roots. To better predict long-range displacements for some joints, SPR is further extended to hierarchical representations. Based on SPR, SPM can efficiently perform multi-person poses estimation by simultaneously predicting root joints (location of instances) and body joint displacements via CNNs. Moreover, to demonstrate the generality of SPM, we also apply it to multi-person 3D pose estimation. Comprehensive experiments on benchmarks MPII, extended PASCAL-Person-Part, MSCOCO and CMU Panoptic clearly demonstrate the state-of-the-art efficiency of SPM for multi-person 2D/3D pose estimation, together with outstanding accuracy.

PDF Abstract ICCV 2019 PDF ICCV 2019 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Multi-Person Pose Estimation COCO test-dev SPM AP 66.9 # 10
APL 73.1 # 6
APM 62.6 # 8
AP50 88.5 # 6
AP75 72.9 # 6
Keypoint Detection MPII Multi-Person SPM mAP@0.5 78.5% # 3
Multi-Person Pose Estimation MPII Multi-Person SPM AP 78.5% # 3
Multi-Person Pose Estimation OCHuman SPM Validation AP 47.6 # 4
AP50 67.5 # 5
AP75 53.2 # 5

Results from Other Papers


Task Dataset Model Metric Name Metric Value Rank Source Paper Compare
Multi-Person Pose Estimation CrowdPose SPM mAP @0.5:0.95 63.7 # 16
AP Easy 70.3 # 16
AP Medium 64.5 # 15
AP Hard 55.7 # 12

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