Real-time Pose Estimation in Mobile with Dense Upsampling Convolution

Yingxian Chen, Baoheng Zhang, W. Fok
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Abstract

Human pose estimation (HPE) has been gradually applied to our daily life. It’s significant to design a simple yet effective model structure for real-time HPE. Several backbones are available for pose estimation, but many of them are imprecise, complex, and mislocalized when it comes to reconstruction. In order to narrow the gaps, several recent studies have demonstrated that deconvolution reconstruction is highly effective in achieving high levels of accuracy. Using the current popular backbones, we re-analyze and reconstruct the models. The efficiency and accuracy are state-of-the-art. Additionally, we release a new dataset that represents real-world data related to yoga. As a result of the development of our framework, we are able to achieve improvements in our released Yoga dataset named SAILPOSE-YOGA as well as other existing benchmarks for the estimation of single poses. The dataset will be released on https://github.com/carolchenyx/SAILPOSE-YOGA.git
基于密集上采样卷积的移动设备实时姿态估计
人体姿态估计(HPE)已经逐渐应用到我们的日常生活中。设计一种简单有效的实时HPE模型结构具有重要意义。几种骨干可用于姿态估计,但其中许多是不精确的,复杂的,并且在重建时定位错误。为了缩小差距,最近的一些研究表明,反褶积重建在实现高水平精度方面是非常有效的。利用当前流行的主干,对模型进行重新分析和重构。效率和准确性是最先进的。此外,我们还发布了一个新的数据集,它代表了与瑜伽相关的真实数据。由于我们的框架的发展,我们能够在我们发布的名为SAILPOSE-YOGA的瑜伽数据集以及其他现有的用于估计单个姿势的基准中实现改进。该数据集将在https://github.com/carolchenyx/SAILPOSE-YOGA.git上发布
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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