Human action classification in partitioned feature space

S. Mohamed, M. Roomi, S. Saranya, S. N. Banu
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引用次数: 1

Abstract

Video surveillance plays a prominent role in law enforcement, personal safety, traffic control, resource planning and security of assets, etc. The need for such systems is increasing every day, with a number of surveillance cameras deployed in public places to analyze human actions. In this paper, a fast and a simple method is proposed to recognize human activities such as walking, running, jumping and bending by analyzing video sequences. Since, no pan, tilt and zoom camera is assumed, a simple background subtraction is used to extract the foreground region. Histogram projection technique is applied to remove shadow from the foreground image. The extreme points of the foreground region are detected using star skeletonization algorithm are then localized by partitioning them into equal sized blocks. The proposed method has been tested on Weizmann dataset and test video sequences and is found to process a frame at the rate of 0.066s and provides an accuracy of 96.87%.
基于分区特征空间的人类行为分类
视频监控在执法、人身安全、交通管控、资源规划、资产保障等方面发挥着突出的作用。对这类系统的需求每天都在增加,在公共场所部署了许多监控摄像头来分析人类的行为。本文通过对视频序列的分析,提出了一种快速、简便的识别人体行走、奔跑、跳跃、弯曲等动作的方法。因为,没有平移,倾斜和变焦相机的假设,一个简单的背景减法是用来提取前景区域。采用直方图投影技术去除前景图像中的阴影。利用星骨架化算法对前景区域的极值点进行检测,然后将极值点划分为大小相等的块进行定位。在Weizmann数据集和测试视频序列上进行了测试,结果表明该方法处理帧的速度为0.066s,准确率为96.87%。
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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