A Lightweight Human Pose Estimation Algorithm Based on High Resolution Network

Q3 Arts and Humanities Icon Pub Date : 2023-03-01 DOI:10.1109/icnlp58431.2023.00020
Sai Ma, Haibo Ge, Wenhao He, Chaofeng Huang, Yu An, Ting Zhou
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Abstract

Human pose estimation is an important research direction in the field of computer vision. At present, the mainstream human pose estimation algorithms have high complexity, large amount of calculation, and cannot be run on resource-constrained devices such as mobile terminals, which severely limits the popularization and application of this technology. Aiming at the problem of increased network model parameters and computational complexity, based on the High-Resolution Network (HRNet), a lightweight human pose estimation network incorporating Ghost module and attention mechanism is proposed. Replaced with Ghost convolution, and added the attention mechanism Concurrent Spatial and Channel Squeeze and Channel Excitation Net module on this basis to ensure the prediction accuracy of the network. Under the same image resolution and environment configuration, the experimental results on the COCO dataset show that the improved network model reduces the number of parameters by 98.3% compared to the high-resolution network model, and reduces the computational complexity by 67.6%. The experimental results show that the improved network model can effectively reduce the amount of network parameters and reduce the computational complexity while maintaining a certain prediction accuracy.
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一种基于高分辨率网络的轻量级人体姿态估计算法
人体姿态估计是计算机视觉领域的一个重要研究方向。目前主流的人体姿态估计算法复杂度高、计算量大,且无法在移动终端等资源受限的设备上运行,严重限制了该技术的推广应用。针对网络模型参数增加和计算复杂度高的问题,基于高分辨率网络(HRNet),提出了一种结合Ghost模块和注意机制的轻量级人体姿态估计网络。替换为Ghost卷积,并在此基础上增加注意机制并发空间通道挤压和通道激励网模块,保证网络的预测精度。在相同的图像分辨率和环境配置下,在COCO数据集上的实验结果表明,改进的网络模型与高分辨率网络模型相比,参数数量减少了98.3%,计算复杂度降低了67.6%。实验结果表明,改进后的网络模型在保持一定预测精度的同时,能有效地减少网络参数的数量,降低计算复杂度。
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Icon Arts and Humanities-History and Philosophy of Science
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