Hidden Markov Model based human activity recognition using shape and optical flow based features

M. Kolekar, D. Dash
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引用次数: 46

Abstract

Recognizing human activity is an important area of research in computer vision application. Manual monitoring of all cameras continuously for longer duration is inefficient making auto-detection of activity important. In this paper shape and optical flow features are fused together and used for human activity recognition. Features extracted are found to be efficient as concluded by ANOVA test. Hidden Markov Model are generated for each activity. System is trained and tested in various indoor and outdoor environment. The method adapted is made shape and angle invariant. Accuracy achieved using least square support vector machine classifier is 80% for all activities. Hidden Markov Model resulted in better accuracy as compared to least square support vector machine classifier with accuracy of 100.00% for walking, 100.00% for hand waving, 90% for bending, 84.61% for running and 90% for side gallop activities. 100% accuracy is achieved in recognizing activity in different angle with respect to camera.
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基于形状和光流特征的隐马尔可夫模型人类活动识别
人类活动识别是计算机视觉应用中的一个重要研究领域。长时间手动监控所有摄像机是低效的,因此自动检测活动很重要。本文将形状和光流特征融合在一起,用于人体活动识别。方差分析表明,提取的特征是有效的。为每个活动生成隐马尔可夫模型。系统在各种室内和室外环境中进行了培训和测试。所采用的方法具有形状和角度不变的特点。使用最小二乘支持向量机分类器实现的所有活动的准确率为80%。与最小二乘支持向量机分类器相比,隐马尔可夫模型的准确率更高,行走的准确率为100.00%,挥手的准确率为100.00%,弯曲的准确率为90%,跑步的准确率为84.61%,侧跑的准确率为90%。对相机不同角度的活动识别准确率达到100%。
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