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A new automatic obstacle detection method based on selective updating of Gaussian mixture model

机译:基于选择性高斯混合模型更新的障碍物自动检测新方法

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Obstacle detection is a hot topic in intelligent visual surveillance system. This paper proposed an automatic obstacle detection method applying to traffic surveillance, which can be used to prevent the traffic accident. In our framework, the images are captured by the traffic surveillance. The GMM (Gaussian Mixture Model) is taken as a short-term background, and foreground objects are extracted by the algorithm SUOG (Selective Updating of GMM). At last, a detection method related object speed and FROI (Flushed Region of Interest) algorithm is proposed. FROI algorithm is based on the concept of connected domain and used to eliminate noises outside road and improve real-time capability. Experiments demonstrate that the proposed obstacle detection method can detect the obstacle effectively and accurately, it can fulfill the requirement of practical application.
机译:障碍物检测是智能视觉监控系统中的热门话题。提出了一种适用于交通监控的自动障碍物检测方法,可用于预防交通事故。在我们的框架中,交通监控可以捕获图像。将GMM(高斯混合模型)作为短期背景,并通过算法SUOG(GMM的选择性更新)提取前景对象。最后,提出了一种与物体速度和FROI(感兴趣区域齐平)算法相关的检测方法。 FROI算法基于连通域的概念,用于消除道路外部的噪声并提高实时能力。实验表明,所提出的障碍物检测方法能够有效,准确地检测出障碍物,能够满足实际应用的要求。

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