Automatic moving object extraction using x-means clustering

K. Imamura, Naoki Kubo, H. Hashimoto
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引用次数: 15

Abstract

The present paper proposes an automatic extraction technique of moving objects using x-means clustering. The proposed technique is an extended k-means clustering and can determine the optimal number of clusters based on the Bayesian Information Criterion(BIC). In the proposed method, the feature points are extracted from a current frame, and x-means clustering classifies the feature points based on their estimated affine motion parameters. A label is assigned to the segmented region, which is obtained by morphological watershed, by voting for the feature point cluster in each region. The labeling result represents the moving object extraction. Experimental results reveal that the proposed method provides extraction results with the suitable object number.
基于x均值聚类的自动运动目标提取
提出了一种基于x均值聚类的运动目标自动提取技术。该方法是一种扩展的k-means聚类方法,可以根据贝叶斯信息准则(BIC)确定最优聚类数量。在该方法中,从当前帧中提取特征点,并根据估计的仿射运动参数对特征点进行x均值聚类分类。通过形态学分水岭对每个区域的特征点聚类进行投票,为分割后的区域分配标签。标记结果表示运动目标的提取。实验结果表明,该方法能够提供具有合适目标数的提取结果。
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