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Papers/InsPose: Instance-Aware Networks for Single-Stage Multi-Pe...

InsPose: Instance-Aware Networks for Single-Stage Multi-Person Pose Estimation

Dahu Shi, Xing Wei, Xiaodong Yu, Wenming Tan, Ye Ren, ShiLiang Pu

2021-07-19Pose EstimationMulti-Person Pose Estimation
PaperPDFCode(official)

Abstract

Multi-person pose estimation is an attractive and challenging task. Existing methods are mostly based on two-stage frameworks, which include top-down and bottom-up methods. Two-stage methods either suffer from high computational redundancy for additional person detectors or they need to group keypoints heuristically after predicting all the instance-agnostic keypoints. The single-stage paradigm aims to simplify the multi-person pose estimation pipeline and receives a lot of attention. However, recent single-stage methods have the limitation of low performance due to the difficulty of regressing various full-body poses from a single feature vector. Different from previous solutions that involve complex heuristic designs, we present a simple yet effective solution by employing instance-aware dynamic networks. Specifically, we propose an instance-aware module to adaptively adjust (part of) the network parameters for each instance. Our solution can significantly increase the capacity and adaptive-ability of the network for recognizing various poses, while maintaining a compact end-to-end trainable pipeline. Extensive experiments on the MS-COCO dataset demonstrate that our method achieves significant improvement over existing single-stage methods, and makes a better balance of accuracy and efficiency compared to the state-of-the-art two-stage approaches. The code and models are available at \url{https://github.com/hikvision-research/opera}.

Results

TaskDatasetMetricValueModel
Pose EstimationCOCO minivalAP63.1InsPose
3DCOCO minivalAP63.1InsPose
Multi-Person Pose EstimationCOCO minivalAP63.1InsPose
1 Image, 2*2 StitchiCOCO minivalAP63.1InsPose

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