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Papers/EfficientPose: Scalable single-person pose estimation

EfficientPose: Scalable single-person pose estimation

Daniel Groos, Heri Ramampiaro, Espen A. F. Ihlen

2020-04-252D Human Pose EstimationPose Estimation
PaperPDFCode(official)

Abstract

Single-person human pose estimation facilitates markerless movement analysis in sports, as well as in clinical applications. Still, state-of-the-art models for human pose estimation generally do not meet the requirements of real-life applications. The proliferation of deep learning techniques has resulted in the development of many advanced approaches. However, with the progresses in the field, more complex and inefficient models have also been introduced, which have caused tremendous increases in computational demands. To cope with these complexity and inefficiency challenges, we propose a novel convolutional neural network architecture, called EfficientPose, which exploits recently proposed EfficientNets in order to deliver efficient and scalable single-person pose estimation. EfficientPose is a family of models harnessing an effective multi-scale feature extractor and computationally efficient detection blocks using mobile inverted bottleneck convolutions, while at the same time ensuring that the precision of the pose configurations is still improved. Due to its low complexity and efficiency, EfficientPose enables real-world applications on edge devices by limiting the memory footprint and computational cost. The results from our experiments, using the challenging MPII single-person benchmark, show that the proposed EfficientPose models substantially outperform the widely-used OpenPose model both in terms of accuracy and computational efficiency. In particular, our top-performing model achieves state-of-the-art accuracy on single-person MPII, with low-complexity ConvNets.

Results

TaskDatasetMetricValueModel
Pose EstimationMPII Human PosePCKh-0.591.2EfficientPose IV
Pose EstimationMPII Human PosePCKh-0.584.8EfficientPose RT
Pose EstimationMPII Single PersonPCKh@0.136EfficientPose IV
Pose EstimationMPII Single PersonPCKh@0.591.2EfficientPose IV
3DMPII Human PosePCKh-0.591.2EfficientPose IV
3DMPII Human PosePCKh-0.584.8EfficientPose RT
3DMPII Single PersonPCKh@0.136EfficientPose IV
3DMPII Single PersonPCKh@0.591.2EfficientPose IV
1 Image, 2*2 StitchiMPII Human PosePCKh-0.591.2EfficientPose IV
1 Image, 2*2 StitchiMPII Human PosePCKh-0.584.8EfficientPose RT
1 Image, 2*2 StitchiMPII Single PersonPCKh@0.136EfficientPose IV
1 Image, 2*2 StitchiMPII Single PersonPCKh@0.591.2EfficientPose IV

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