动态视频背景中运动目标的检测与分割

Jiaming Zhang, Chi Hau Chen
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引用次数: 49

摘要

在监控视频中,移动的物体往往包含着最重要的信息。运动目标的检测和分割是目标识别和入侵分析的基础。高斯混合模型(GMM)是从视频背景中提取运动目标的有效方法。然而,传统的混合高斯方法在复杂背景下存在运动检测错误和收敛速度慢的问题。提出了一种将自适应高斯混合模型与支持向量机(SVM)分类器相结合的视频监控动态背景中运动目标的检测与分割方法。采用混合高斯法对图像序列中的每个像素分别作为背景像素或前景像素进行排序。进一步采用基于分块的SVM分类器对前景像素进行检查,并将前景像素分为运动像素和非运动像素。所有的运动像素被分组为运动对象。该方法综合利用了时空信息,对复杂环境具有较强的鲁棒性。实验结果表明,该方法显著降低了运动目标的误检测,提高了运动目标的分割质量。
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Moving Objects Detection and Segmentation In Dynamic Video Backgrounds
Moving objects often contain the most important information in surveillance videos. The detection and segmentation of moving objects are the basis for object recognition and intrusion analysis. Gaussian mixture model (GMM) is an effective way to extract moving objects from a video background. However, the conventional mixture Gaussian method suffers from false motion detection in complex backgrounds and slow convergence. A novel approach, which integrates an adaptive Gaussian mixture model with a support vector machine (SVM) classifier, is proposed to detect and segment moving objects in dynamic backgrounds for video surveillance. Each pixel in an image sequence is sorted as a background pixel or a foreground pixel by applying mixture Gaussian method. A block-based SVM classifier is further employed to check each foreground pixel, and it classifies the foreground pixel as a motion pixel or a non-motion pixel. All motion pixels are grouped into moving objects. By utilizing both spatial and temporal information, this integrated method is robust to complex environments. Experimental results show this approach significantly decreases the false motion detection and improves segmentation quality of moving objects.
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