人体动作识别方法综述

S. Gupta, D. Kumar, V. Athavale
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引用次数: 5

摘要

动作识别是在监视、健康监测和计算机视觉等各种应用程序中实现的一个新的特定领域的分支。人体动作识别是一个具有挑战性的研究课题。大多数研究人员建议使用高效的机器学习HAR算法,如SVM和KNN。在最先进的HAR方案中使用的数据集很容易在社交平台上获得。特征学习和分类方法用于运动检测。像走路、跑步、跳跃、睡觉、摔倒和互动等活动都可以被机器学习方法识别。在本文中,我们提出了用于HAR任务的各种机器学习和混合算法。研究人员用他们的工作测试了不同的数据集。所回顾的所有研究的准确性也提到了它们的优点。基于这些研究,我们致力于将深度学习和机器方法结合起来用于HAR。HAR方法依赖于可穿戴传感器和记录设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Human Action Recognition Approaches
Action Recognition is a new world-specific branch implemented in various applications like surveillance, health monitoring, and computer vision. Human Action Recognition is a challenging task in the research area field. Most of the researchers suggested efficient machine learning HAR algorithms like SVM and KNN. The dataset used in state of the art HAR schemes is readily available on a social platform. The features learning and classification approaches are used for motion detection. Activities like walking, running, jumping, sleeping, falling, and interaction are recognized by the machine learning approach. In this paper, we are presenting various machine learning and hybrid algorithm for the HAR task. Different datasets tested by the researchers with their developed work. The accuracy achieved by all reviewed studies also mentioned with their advantages. Based on these studies, we work on the combination of deep learning and machine approaches for the HAR. The HAR approaches depend on the wearable sensor as well as the recording devices.
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