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Double change detection method for moving-object segmentation based on clustering

机译:基于聚类的运动目标分割双变化检测方法

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In this paper, an efficient moving object segmentation algorithm in the wavelet domain is proposed using three successive frames. The change detection method, which employs fuzzy C-means clustering technique to classify motion features of four wavelet sub-bands, is used twice to separate significant change pixels in the wavelet domain from the background. After applying the intersect operation, the change detection masks are obtained in wavelet domain. Finally, further object shape information and accurate extraction of the moving object is obtained in original resolution according to current object edge map. The experimental results demonstrate the algorithm effective.
机译:本文提出了一种使用三个连续帧的小波域有效运动目标分割算法。变化检测方法采用模糊C均值聚类技术对四个小波子带的运动特征进行分类,两次被用于从背景中分离出小波域中的重要变化像素。应用相交操作后,在小波域中获得变化检测掩码。最后,根据当前物体边缘图,以原始分辨率获得进一步的物体形状信息和运动物体的精确提取。实验结果证明了该算法的有效性。

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