动态背景下监控系统的运动目标检测

Wasim Hossain, M. Das
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引用次数: 5

摘要

从运动图像序列中检测目标是最具挑战性的研究领域之一。视频序列中运动目标的检测是计算机视觉信息提取的基础步骤,也是关键任务。本文的主要思想是平滑地检测运动目标区域。本文提出了一种动态监控系统中实时确定目标的方法。它主要基于帧差模型和背景相减模型;根据周围环境选择一种方法,充分利用FDM和BSM的优点。利用该模型,可以有效地实现包含时间静止物体、不动物体、具有相似背景色值的物体、光照变化的场景监控应用;可以平滑地检测物体的区域。确定运动目标区域后,消除噪声,最终得到运动目标区域。实验结果表明,该方法可以鲁棒地检测出视频序列中的运动目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving object detection in dynamic backgrounds for surveillance systems
Object detection from a moving image sequence is one of the most challenging research area. Detection of moving objects in a video sequence is the fundamental step but a critical task in information extraction for computer vision applications. The main idea in our paper is to detect the moving objects area smoothly. This paper presents a real time approach to determine objects in the dynamic surveillance systems. It is mainly based on frame difference model and background subtraction model; choose one of the approaches according to the surrounding environment and take the advantages of both FDM and BSM. With this model, a scene containing temporal stationary objects, motionless objects, objects having similar chromatic value of background, illumination change effectively in a surveillance application; can detected smoothly the area of the objects. After determining the moving object area, it is eliminates the noise and finally produce the moving objects area. The experimental results show that our proposed approach can detect the moving objects from video sequence robustly and successfully.
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