Human Action Recognition using Machine Learning in Uncontrolled Environment

Inzamam Mashood Nasir, M. Raza, J. H. Shah, Muhammad Attique Khan, A. Rehman
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引用次数: 20

Abstract

Video based Human Action Recognition (HAR) is an active research field of Machine Learning (ML) and human detection in videos is the most important step in action recognition. Recently, several techniques and algorithms have been proposed to increase the accuracy of HAR process, but margin of improvement still exists. Detection and classification of human actions is a challenging task due to random changes in human appearance, clothes, illumination, and background. In this article, an efficient technique to classify human actions by utilizing steps like removing redundant frames from videos, extracting Segments of Interest (SoIs), feature descriptor mining through Geodesic Distance (GD), 3D Cartesian-plane Features (3D-CF), Joints MOCAP (JMOCAP) and n-way Point Trajectory Generation (nPTG). A Neuro Fuzzy Classifier (NFC) is used at the end for the classification purpose. The proposed technique is tested on two publicly available datasets including HMDB-51 and Hollywood2, and achieved an accuracy of 82.55% and 91.99% respectively. These efficient results prove the validity of proposed model.
在非受控环境中使用机器学习的人类行为识别
基于视频的人体动作识别(HAR)是机器学习(ML)的一个活跃研究领域,视频中的人体检测是动作识别中最重要的一步。近年来,人们提出了几种技术和算法来提高HAR过程的精度,但仍然存在改进的余地。由于人的外表、衣着、光照和背景的随机变化,人类行为的检测和分类是一项具有挑战性的任务。在这篇文章中,一个有效的技术来分类人类的行为,利用步骤,如从视频中删除冗余帧,提取感兴趣的片段(SoIs),特征描述符挖掘通过测地距离(GD),三维笛卡尔平面特征(3D- cf),关节MOCAP (JMOCAP)和n-way点轨迹生成(nPTG)。最后使用神经模糊分类器(NFC)进行分类。在HMDB-51和holwood2两个公开数据集上进行了测试,准确率分别达到82.55%和91.99%。这些有效的结果证明了所提模型的有效性。
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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