基于传统特征的人类活动自动识别系统

M. A. Khan, Irfan Haider, Muhammad Nazir, Ammar Armghan, H. M. J. Lodhi, J. Khan
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引用次数: 4

摘要

人类活动识别(HAR)是一个重要的研究课题,它的应用遍及计算机视觉和机器学习的各个领域,包括视频监控、机器人等。本文提出了一种新的基于特征融合和选择的自动HAR方法。该方法包括基于光流的运动区域提取和后期的感兴趣区域检测三个核心步骤,将形状特征和灰度差矩阵(GLDM)特征结合到一个基于优先值指标的矩阵中,最后进行基于Reyni熵控制的欧几里得分类器的最佳特征选择。将最终选择的特征输入到Cubic SVM中进行最终识别。在KTH、YouTube和Weizmann三个数据集上对所提出的技术进行了验证,准确率分别达到99.30%、99.80%和99.60%。总体而言,Cubic SVM在现有技术中表现优异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traditional Features based Automated System for Human Activities Recognition
Human Activities Recognition (HAR) is an important research topic and its applications are spread in all the fields of computer vision and machine learning including video surveillance, robotics, and name a few more. In this paper, a new traditional feature fusion and selection-based method is proposed for automated HAR. The proposed methodology consists of three core steps- optical flow-based motion region extraction and later ROI detection, shape and gray level difference matrix (GLDM) features are combined in one matrix based on seniority value indexes, and finally, Reyni entropy-controlled Euclidean classifier based best features selection. The final selected features are put to Cubic SVM for final recognition. The validation of the proposed technique is conducted on three datasets- KTH, YouTube, and Weizmann and achieved an accuracy of 99.30%, 99.80%, and 99.60%, respectively. Overall, Cubic SVM outperforms among existing techniques.
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