基于模糊聚类质心改进的多光谱图像分割

S. Mantilla, Yessenia Yari
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引用次数: 2

摘要

多光谱图像中存在异常值、噪声、损坏数据和大量样本,使得分割分析工作十分繁琐。特别是模糊聚类方法容易受到特征不均匀性的影响。此外,FCM、PFCM、FCC、FWCM和修正等算法都是通过整合空间信息来解决这些问题的。这个过程是通过分析样品的邻域来进行的。本文提出将样本存在概率整合到现有模型NFCC内的“项”形式。该算法给出了模糊聚类的基本步骤。中间变量将每个样本之间的测量值与所有质心相结合,这将用新项替换现有项。这个新术语将多光谱图像的每个样本之间的空间关系整合到一个拟合项中。该方法适用于多光谱图像。整体精度表明,纳入NFCC模型的术语减少了整体聚类重叠。
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Multispectral images segmentation using new fuzzy cluster centroid modified
The presence of outliers, noise, corrupt pieces of data and great quantity of samples in a multispectral image, makes the segmentation analysis work tedious. The fuzzy clustering approach, specially, is susceptible to inhomogeneity of characteristics. Furthermore, many algorithms such us FCM, PFCM, FCC, FWCM and modification aim to solve these problems by integrating spacial information. This process is carried through the analysis of the sample's neighborhood. This paper proposes the integration of the sample presence probability into a ”term” like form inside the existent model NFCC. This algorithm presents the basic steps for fuzzy clustering. With a middle variant that integrates the measure between each sample to all the centroids, this replaces the existent term by a new term. This new term integrates the spatial relationship between each sample of the multispectral image into a fitting term. The method is applied to multispectral images. Overall accuracy indicates that the term integrated to NFCC model decrease the overall cluster overlapping.
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