现实世界视频场景中地目标检测

B. Valentine, S. Apewokin, L. Wills, D. S. Wills, A. Gentile
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引用次数: 14

摘要

传统的视频场景分析依赖于精确的背景建模来识别突出的前景目标。然而,在许多重要的监视应用中,显著性是由前景和背景之间出现一个新的非短暂物体来定义的。这个中景区域是由物体出现后的时间窗口定义的;但它也依赖于自适应背景建模,以允许检测场景变化(例如,遮挡,小照明变化)。人类的视觉系统不适合中景检测。例如,在检查一个繁忙的航空公司航站楼时,很难(但很重要)发现现场出现的无人看管的包。本文介绍了一种注重计算效率和存储效率的中景检测技术。该方法使用了一种新的自适应像素级建模技术,该技术源自现有的背景方法。实验结果表明,该技术可以准确有效地识别真实场景中的中景物体,包括PETS2006和AVSS2007挑战数据集。
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Midground object detection in real world video scenes
Traditional video scene analysis depends on accurate background modeling to identify salient foreground objects. However, in many important surveillance applications, saliency is defined by the appearance of a new non-ephemeral object that is between the foreground and background. This midground realm is defined by a temporal window following the object's appearance; but it also depends on adaptive background modeling to allow detection with scene variations (e.g., occlusion, small illumination changes). The human visual system is ill-suited for midground detection. For example, when surveying a busy airline terminal, it is difficult (but important) to detect an unattended bag which appears in the scene. This paper introduces a midground detection technique which emphasizes computational and storage efficiency. The approach uses a new adaptive, pixel-level modeling technique derived from existing backgrounding methods. Experimental results demonstrate that this technique can accurately and efficiently identify midground objects in real-world scenes, including PETS2006 and AVSS2007 challenge datasets.
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