Object detection and classification in surveillance system

S. Varma, M. Sreeraj
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引用次数: 15

Abstract

Object Detection and Tracking in Surveillance System is inevitable in the present scenario, as it is not possible for a person to continuously monitor the video clips in real time. We propose an efficient and novel system for detecting moving objects in a surveillance video and predict whether it is a human or not. In order to account for faster object detection, we use an established Background Subtraction Algorithm known as Mixture of Gaussians. A set of simple and efficient features are extracted and provided to Support Vector Machine. The performance of the system is evaluated with different kernels of SVM and also for K Nearest Neighbor Classifier with its various distance metrics. The system is evaluated using statistical measurements, and the experiments resulted in average F measure of 86.925% and thus prove the efficiency of the novel system.
监控系统中的目标检测与分类
监控系统中的目标检测与跟踪在当前场景中是不可避免的,因为一个人不可能持续实时地监控视频片段。我们提出了一种有效的、新颖的系统来检测监控视频中的运动物体,并预测它是否是人。为了考虑更快的目标检测,我们使用了一种被称为混合高斯的背景减法算法。提取出一组简单高效的特征并提供给支持向量机。用支持向量机的不同核对系统的性能进行了评价,并对具有不同距离度量的K近邻分类器进行了评价。实验结果表明,系统的平均F值为86.925%,证明了系统的有效性。
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