A binary division algorithm for clustering remotely sensed multi-spectral images

H. Hanaizumi, S. Chino, S. Fujimura
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引用次数: 4

Abstract

A new method is proposed for clustering remotely sensed multi-spectral images with both high accuracy and high efficiency. For high speed processing, we project image data onto one dimensional sub-space, and limit the number of boundaries in the sub-space. The optimal sub-space and boundary are selected so that the ratio of the variance of within distance to the variance of between distance takes the minimum value. Image data are repeatedly divided into two groups until all of the groups consist of a single cluster. Performance of the proposed method was better than that of ISODATA in both speed and accuracy. The method was successfully applied to actual remotely sensed multi-spectral images.<>
遥感多光谱图像聚类的二值分割算法
提出了一种高精度、高效率的遥感多光谱图像聚类方法。为了实现高速处理,我们将图像数据投影到一维子空间中,并限制子空间中边界的数量。选取最优子空间和边界,使距离内方差与距离间方差之比取最小值。将图像数据反复分成两组,直到所有组都包含一个簇。该方法在速度和精度上均优于ISODATA方法。该方法已成功应用于实际遥感多光谱图像。
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