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Lumin Xu Sheng Jin Wentao Liu Chen Qian Wanli Ouyang Ping Luo Xiaogang Wang

Abstract
This paper investigates the task of 2D whole-body human pose estimation, which aims to localize dense landmarks on the entire human body including body, feet, face, and hands. We propose a single-network approach, termed ZoomNet, to take into account the hierarchical structure of the full human body and solve the scale variation of different body parts. We further propose a neural architecture search framework, termed ZoomNAS, to promote both the accuracy and efficiency of whole-body pose estimation. ZoomNAS jointly searches the model architecture and the connections between different sub-modules, and automatically allocates computational complexity for searched sub-modules. To train and evaluate ZoomNAS, we introduce the first large-scale 2D human whole-body dataset, namely COCO-WholeBody V1.0, which annotates 133 keypoints for in-the-wild images. Extensive experiments demonstrate the effectiveness of ZoomNAS and the significance of COCO-WholeBody V1.0.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| 2d-human-pose-estimation-on-coco-wholebody-1 | ZoomNet (V1.0 data) | WB: 63.0 body: 74.5 face: 88.0 foot: 60.9 hand: 57.9 |
| 2d-human-pose-estimation-on-coco-wholebody-1 | ZoomNAS (V1.0 data) | WB: 65.4 body: 74.0 face: 88.9 foot: 61.7 hand: 62.5 |
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