各自的体积热图自动编码器的多人三维姿态估计

Minghao Wang, Long Ye, Fei Hu, Li Fang, Wei Zhong, Qin Zhang
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引用次数: 0

摘要

利用热图预测人体关节位置已成为目前性能最好的姿态估计方法之一,但这些方法往往对内存和计算量要求较高,难以应用于实践。本文提出了一种有效的压缩热图的方法,即各自体积热图自动编码器(RVHA)来表示数据量较小的地面真热图,然后构建了一个基于RVHA的姿态估计框架,从单目RGB图像中实现人体关节位置。由于我们的压缩策略将每个人体关节体积热图单独作为输入帧,因此与JTA数据集上的最新状态相比,我们的方法表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Respective Volumetric Heatmap Autoencoder for Multi-Person 3D Pose Estimation
Using heatmaps to predict body joint locations has become one of the best performing pose estimation methods, however, these methods often have the high demands for memory and computation, which make them difficult to apply into practice. This paper proposes an effective compression method to reduce the size of heatmaps, namely lies Respective Volumetric Heatmap Autoencoder(RVHA) to represent the ground truth heatmaps with smaller data size, then a RVHA-based pose estimation framework is built to achieve the human joint locations from monocular RGB images. Thanks to our compression strategy which takes each human joint volumetric heatmap as an input frame individually, our method performs favorably when compared to state of the art on the JTA datasets.
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