A framework for abandoned object detection from video surveillance

R. Tripathi, A. S. Jalal, C. Bhatnagar
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引用次数: 29

Abstract

In this paper, we propose a method to detect abandoned object from surveillance video. In first step, foreground objects are extracted using background subtraction in which background modeling is done through running average method. In second step, static objects are detected by using contour features of foreground objects of consecutive frames. In third step, detected static objects are classified into human and non-human objects by using edge based object recognition method which is capable to generate the score for full or partial visible object. Nonhuman static object is analyzed to detect abandoned object. Experimental results show that proposed system is efficient and effective for real-time video surveillance, which is tested on IEEE Performance Evaluation of Tracking and Surveillance data set (PETS 2006, PETS 2007) and our own dataset.
基于视频监控的废弃目标检测框架
本文提出了一种从监控视频中检测废弃物体的方法。首先,采用背景相减法提取前景目标,通过运行平均法对背景进行建模;第二步,利用连续帧前景目标的轮廓特征检测静态目标。第三步,采用基于边缘的目标识别方法,将检测到的静态目标分为人类和非人类目标,并生成完全或部分可见目标的分数。对非人类静态物体进行分析,检测废弃物体。在IEEE跟踪与监控性能评估数据集(PETS 2006, PETS 2007)和我们自己的数据集上进行了测试,结果表明该系统在实时视频监控中是高效有效的。
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