Heba Hamdy Ali , Hossam M. Moftah , Aliaa A.A. Youssif
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引用次数: 38
摘要
基于深度图的人类活动识别是对具有特定活动的深度序列进行分类的过程。在这个问题中,一些应用程序在诸如监视系统、计算机视觉应用程序和视频检索系统等领域中代表了健壮的解决方案。由于一个班级内部的变化,以及不同班级的活动和视频录制设置的区别,这项任务具有挑战性。在本研究中,我们详细介绍了目前基于深度图的图像表示和特征提取过程的研究进展。此外,我们还讨论了最新的数据集和随后的分类过程。此外,对一些更流行的深度图方法的比较研究提供了更详细的信息。在三个基于深度的数据集“MSR Action 3D”、“MSR Hand Gesture”和“MSR Daily Activity 3D”上对所提出的方法进行了评估。实验结果分别达到100%、95.83%和96.55%。在“RGBD-HuDaAct”数据集上结合深度和颜色特征,达到89.1%。
Depth-based human activity recognition: A comparative perspective study on feature extraction
Depth Maps-based Human Activity Recognition is the process of categorizing depth sequences with a particular activity. In this problem, some applications represent robust solutions in domains such as surveillance system, computer vision applications, and video retrieval systems. The task is challenging due to variations inside one class and distinguishes between activities of various classes and video recording settings. In this study, we introduce a detailed study of current advances in the depth maps-based image representations and feature extraction process. Moreover, we discuss the state of art datasets and subsequent classification procedure. Also, a comparative study of some of the more popular depth-map approaches has provided in greater detail. The proposed methods are evaluated on three depth-based datasets “MSR Action 3D”, “MSR Hand Gesture”, and “MSR Daily Activity 3D”. Experimental results achieved 100%, 95.83%, and 96.55% respectively. While combining depth and color features on “RGBD-HuDaAct” Dataset, achieved 89.1%.