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A Comparison of Moving Object Detection Methods for Real-Time Moving Object Detection

机译:实时运动目标检测中运动目标检测方法的比较

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摘要

Moving object detection has a wide variety of applications from traffic monitoring, site monitoring, automatic theft identification, face detection to military surveillance. Many methods have been developed across the globe for moving object detection, but it is very difficult to find one which can work globally in all situations and with different types of videos. The purpose of this paper is to evaluate existing moving object detection methods which can be implemented in software on a desktop or laptop, for real time object detection. There are several moving object detection methods noted in the literature, but few of them are suitable for real time moving object detection. Most of the methods which provide for real time movement are further limited by the number of objects and the scene complexity. This paper evaluates the four most commonly used moving object detection methods as background subtraction technique, Gaussian mixture model, wavelet based and optical flow based methods. The work is based on evaluation of these four moving object detection methods using two (2) different sets of cameras and two (2) different scenes. The moving object detection methods have been implemented using MatLab and results are compared based on completeness of detected objects, noise, light change sensitivity, processing time etc. After comparison, it is observed that optical flow based method took least processing time and successfully detected boundary of moving objects which also implies that it can be implemented for real-time moving object detection.
机译:运动物体检测具有广泛的应用,从交通监控,站点监控,自动盗窃识别,面部检测到军事监视。全球已开发出许多方法来检测运动物体,但是很难找到一种可以在所有情况下和不同类型的视频中全局使用的方法。本文的目的是评估可以在台式机或笔记本电脑上的软件中实现的,用于实时物体检测的现有运动物体检测方法。文献中提到了几种运动物体检测方法,但是很少有适合于实时运动物体检测的方法。提供实时移动的大多数方法进一步受到对象数量和场景复杂性的限制。本文对四种最常用的运动物体检测方法进行了评估,包括背景扣除技术,高斯混合模型,基于小波和基于光流的方法。这项工作是基于使用两(2)套不同的摄像机和两(2)个不同的场景对这四种运动物体检测方法进行评估而得出的。已经使用MatLab实现了运动物体检测方法,并根据检测到的物体的完整性,噪声,光变化敏感性,处理时间等对结果进行了比较。经过比较,可以发现基于光流的方法花费了最少的处理时间并且成功地检测了边界对移动物体的检测也意味着可以将其实现为实时移动物体检测。

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