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Adaptive foreground edge extraction from video stream

机译:从视频流中自适应提取前景边缘

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We propose a new method to extract foreground edges in a video streams taken from a stationary camera. Our background model is based on the fact that a background pixel''s gradient components follow Gaussian mixture model(GMM). GMM is performed on the initial group of video frames to obtain the initial pixel gradient component distribution information at each pixel. Then each of the current Canny edge pixels is classified into foreground or background pixel based on its gradient components'' weighted square sum of distances from their respective mean values. If the difference is larger than a threshold, it is then classified as a foreground pixel, otherwise a background pixel in which case the GMM information is accordingly updated. If the ratio of the number of foreground pixels over the total number of Canny edge pixel is large than a certain threshold, a new GMM background modeling is trigger. The algorithm is implemented in Visual C++ and tested on a laptop powered by an Intel Pentium 3.0GHz. The experiment shows the algorithm is highly selective in extracting valid foreground edge pixels and it''s speed is 43 ms/frame for a video stream of 640×480 and shows that the method is applicable for real-time processing.
机译:我们提出了一种从固定摄像机拍摄的视频流中提取前景边缘的新方法。我们的背景模型基于以下事实:背景像素的梯度分量遵循高斯混合模型(GMM)。对视频帧的初始组执行GMM,以获得每个像素处的初始像素梯度分量分布信息。然后,根据每个当前Canny边缘像素的梯度成分距各自平均值的距离的加权平方和,将其分为前景或背景像素。如果差异大于阈值,则将其分类为前景像素,否则分类为背景像素,在这种情况下,GMM信息将相应更新。如果前景像素的数量与Canny边缘像素的总数之比大于某个阈值,则触发新的GMM背景建模。该算法在Visual C ++中实现,并在由Intel Pentium 3.0GHz驱动的笔记本电脑上进行了测试。实验表明,该算法在提取有效前景边缘像素方面具有较高的选择性,对于640×480的视频流,其速度为43 ms /帧,并表明该方法适用于实时处理。

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