Study on Deep Learning Models for Human Pose Estimation and its Real Time Application

Jyoti Jangade, K. S. Babulal
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Abstract

In computer vision, human pose estimation details the posture of the person’s body structure that can be Kinematic, Planer, and Volumetric in an image or video. However, pose detection is often critical to be driven by distinct human actions. Thus, this survey report analysis the recent progression of the bottom-up and top-down human pose evaluation models. This survey report focuses on 2D and 3D skeleton-based human pose detection from the captured Red Green Blue(RGB) images. We have condensed the performance of the recent pose recognition, tracking, and detection techniques that utilize pose estimation from colour images as captured and then exhibit room for much more refinement in this domain. In this paper, scrutinize the study of human pose estimation models like 2d and 3d HPE for identify human movements such as running, dancing, sport so on and recent computer vision-based advances. This study has included various methods for detecting in two and three dimensions. This paper summarises the deep learning models for HPE, dataset, and challenges.
人体姿态估计的深度学习模型及其实时应用研究
在计算机视觉中,人体姿态估计详细描述了图像或视频中人体结构的姿态,这些结构可以是运动学的、平面的和体积的。然而,姿势检测通常是由不同的人类行为驱动的。因此,本调查报告分析了自底向上和自顶向下的人体姿态评估模型的最新进展。本调查报告侧重于从捕获的红绿蓝(RGB)图像中进行基于2D和3D骨骼的人体姿势检测。我们浓缩了最近的姿态识别、跟踪和检测技术的性能,这些技术利用捕获的彩色图像的姿态估计,然后在这个领域展示了更多的改进空间。在本文中,详细介绍了2d和3d HPE等人体姿态估计模型的研究,用于识别人体运动,如跑步,舞蹈,运动等,以及最近基于计算机视觉的进展。这项研究包括了二维和三维检测的各种方法。本文总结了HPE的深度学习模型、数据集和挑战。
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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