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Detecting and Recognizing Abandoned Objects in Crowded Environments

机译:在拥挤的环境中检测和识别遗弃的物体

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In this paper we present a framework for detecting and recognizing abandoned objects in crowded environments. The two main components of the framework include background change detection and object recognition. Moving blocks are detected using dynamic thresholding of spatiotemporal texture changes. The background change detection is based on analyzing wavelet transform coefficients of non-overlapping and non-moving 3D texture blocks. Detected changed background becomes the region of interest which is scanned to recognize various objects under surveillance such as abandoned luggage. The object recognition is based on model histogram ratios of image gradient magnitude patches. Supervised learning of the objects is performed by support vector machine. Experimental results are demonstrated using various benchmark video sequences (PETS, CAVIAR, i-Lids) and an object category dataset (CalTech256).
机译:在本文中,我们提出了一个在拥挤的环境中检测和识别废弃物体的框架。该框架的两个主要组件包括背景变化检测和对象识别。使用时空纹理变化的动态阈值检测运动块。背景变化检测基于分析不重叠且不移动的3D纹理块的小波变换系数。检测到的背景变化成为感兴趣的区域,对其进行扫描以识别监视下的各种物体,例如废弃的行李。对象识别基于图像梯度幅度补丁的模型直方图比率。通过支持向量机对对象进行监督学习。使用各种基准视频序列(PETS,CAVIAR,i-Lids)和对象类别数据集(CalTech256)证明了实验结果。

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