A security system for monitoring trespass in an environment with obstacles

Tetsuhiro Maruyama, M. Hoguro, R. Taguchi, T. Umezaki
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引用次数: 2

Abstract

We are developing the security system for detecting and notifying a trespass. This system doesn't need security staffs because the trespass is detected by the automatic operation, and it notifies via e-mail. The trespass is detected by the time-varying image processing. In the existing methods of a moving object detection using image recognition technology, they have processed an obtained whole image, and have detected a moving object in a picture. However, when a moving portion in the scene is hidden by some obstacles, the recognition of a moving object is sometimes difficult. In this study, we present a novel method of discriminating moving objects, such as a human or a vehicle. We use only a narrow and tall area of the video called Slit Frame Image to detect moving portions. By using this method, we are able to obtain the patterns of moving objects while avoiding the obstacles in a picture. Then we classify them by DP matching against previously registered reference patterns in the database of all possible classes (human, bicycle, car, and bus). In this paper, we compare several variations of an algorithm used to detect and classify objects passing laterally in front of a security camera. Non-homogeneity of people's patterns and their subsequent frequent misclassification is addressed by not producing reference patterns of people, and differentiating them from correctly classified bicycles by the DP distance to the first candidate.
在有障碍物的环境中监视非法侵入的安全系统
我们正在开发检测和通知非法侵入的安全系统。该系统不需要保安人员,因为自动操作可以检测到非法侵入,并通过电子邮件通知。通过时变图像处理检测侵入。在现有的利用图像识别技术进行运动目标检测的方法中,它们都是对获得的整幅图像进行处理,并对图像中的运动目标进行检测。然而,当场景中的移动部分被一些障碍物隐藏时,对移动物体的识别有时会很困难。在这项研究中,我们提出了一种新的方法来区分移动的物体,如人或车辆。我们只使用视频中一个又窄又高的区域(称为狭缝帧图像)来检测移动部分。通过这种方法,我们可以在避免图像中障碍物的同时获得运动物体的模式。然后,我们根据数据库中所有可能的类别(人、自行车、汽车和公共汽车)中先前注册的参考模式进行DP匹配,对它们进行分类。在本文中,我们比较了几种用于检测和分类在安全摄像机前横向通过的物体的算法的变体。通过不生成人的参考模式,并通过到第一个候选对象的DP距离将其与正确分类的自行车区分开来,解决了人的模式的非同质性及其随后频繁的错误分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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