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Detecting abandoned objects in crowded scenes of surveillance videos using adaptive dual background model

机译:在使用自适应双背景模型中检测在拥挤的视频中的被放弃的对象

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Detecting an abandoned object in crowded scenes of surveillance videos becomes more complex task due to occlusions, lighting changes, and other factors. In this paper, a new framework to detect abandoned object using dual background model subtraction is presented. In our system, the adaptive background model is generated based on statistical information of pixel intensity that robust against lighting condition. Foreground analysis using geometrical properties is then applied in order to filter out false region. Human and vehicle detection are then integrated to verify the region as static object, human or vehicle. The robustness and efficiency of the proposed method are tested on several public databases such as i-LIDS and PETS2006 datasets. These are also tested using our own dataset, ISLab dataset. The test and evaluation result show that our method is efficient and robust to detect abandoned object in crowded scenes.
机译:由于遮挡,照明变化和其他因素,在监控视频中检测到挤出的监视视频中的遗弃对象变得更加复杂。在本文中,呈现了一种使用双背景模型减法来检测废弃对象的新框架。在我们的系统中,基于对照明条件稳健的像素强度的统计信息生成自适应背景模型。然后应用使用几何特性的前景分析以滤除错误区域。然后集成了人和车辆检测以验证该区域作为静态物体,人或车辆。所提出的方法的鲁棒性和效率在几个公共数据库(如I-LID和PETS2006数据集)上测试。这些也使用自己的数据集,ISLAB数据集进行测试。测试和评估结果表明,我们的方法是有效且强大的,以检测拥挤的场景中的废弃对象。

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