Hae-Rim Shin, Jeonghwan Gwak, Jongmin Yu, M. Jeon
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引用次数: 2

摘要

随着单纯用于监控或识别的闭路电视的迅速发展,智能监控系统的研究日益引起人们的关注。最重要的是,异常事件检测通过检测或识别通常不常见的行为或情况,正在成为监测系统的重要组成部分。在这项工作中,我们提出了一种使用轨迹建模和自动场景自适应长方体确定方案的异常事件检测方法。首先,在不使用任何检测方法的情况下,我们构建了一个人体外观模型来确定人体尺寸。然后,利用从人体图像中提取的HOG特征作为预定输入,构建人体外观模型;我们对输入数据集进行背景减法,然后将从前景边界框中提取的HOG特征与人类外貌模型进行比较。人的大小由具有最高相似性的前景边界框的大小决定。根据实验得到的比例,根据人体尺寸计算长方体尺寸,并根据长方体尺寸构建定向轨道模型直方图。我们使用UCSD数据集来验证所提出的方法。实验结果验证了采用场景自适应长方体尺寸自动确定方案的AED方法的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature flow-based abnormal event detection using a scene-adaptive cuboid determination method
As closed circuit television which had been used only for surveillance or identification has developed rapidly the research on intelligent surveillance systems is getting increased interest. Above all, abnormal event detection is becoming an essential part of surveillance systems by detecting or identifying actions or situations which are not commonly occurred in general. In this work, we propose an abnormal event detection method using trajectory modeling with an automatic scene-adaptive cuboid determination scheme. First, we constructed a human appearance model to determine the human size without using any detection method. Then, HOG feature extracted from human images which is the predetermined input is used to construct a human appearance model. We applied a background subtraction to input datasets and then compared HOG feature extracted from the bounding box of the foreground with the human appearance model. The human size is determined by the size of the foreground bounding box with the highest similarity. With the ratio obtained through the experiments, the cuboid size is calculated according to the human size and histogram of oriented tracklets model is constructed by the cuboid size. We used the UCSD dataset to validate the proposed approach. From the experimental results, we verified the significance of the proposed AED method adopting the automatic scene-adaptive cuboid size determination scheme.
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