基于背景建模和时空模板匹配技术的视频人体活动自动识别

C. M. Sharma, A. Kushwaha, S. Nigam, A. Khare
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引用次数: 16

摘要

人类活动识别是一个具有挑战性的研究领域,因为它在视觉监控中有各种潜在的应用。提出了一种基于时空模板匹配的活动识别方法。我们使用简单的统计模型对场景中的背景进行建模,并提取场景中的前景对象。利用运动历史图像(motion history images, MHI)和物体形状信息构建视频中不同人类活动的时空模板,如行走、站立、弯曲、睡眠和跳跃。实验结果表明,该方法可以准确、快速地识别多个目标的多个活动。
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Automatic human activity recognition in video using background modeling and spatio-temporal template matching based technique
Human activity recognition is a challenging area of research because of its various potential applications in visual surveillance. A spatio-temporal template matching based approach for activity recognition is proposed in this paper. We model the background in a scene using a simple statistical model and extract the foreground objects in a scene. Spatio-temporal templates are constructed using the motion history images (MHI) and object shape information for different human activities in a video like walking, standing, bending, sleeping and jumping. Experimental results show that the method can recognize these multiple activities for multiple objects with accuracy and speed.
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