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An Improved Change Detection Based on PCA and FCM Clustering for Earthen Ruins

机译:基于PCA和FCM聚类的改进变化检测土遗址

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Nondestructively detecting the damage change is important for the protection of the earthen ruins. How to effectively detect the subtle changes in earthen ruins is an urgent problem to be solved. In our paper, we use the difference and the log-likelihood ratio method to create a difference image, which can effectively avoid the influence of noise. Then the orthonormal eigenvectors are extracted through principal component analysis (PCA) of non-overlapping block set to create an eigenvector space which is mapped to each vector in turn to form a feature vector space. The feature vector space is partitioned into two clusters according to the feature vector approximate degree by using fuzzy c-means (FCM) clustering. The experiment results on the images of Hanguangmen earthen ruin show that this method can find the changing area simply and efficiently.
机译:无损检测损害变化对于保护土遗址很重要。如何有效地检测土遗址的微妙变化是要解决的紧急问题。在我们的论文中,我们使用差异和日志似然比方法来创建差异图像,可以有效避免噪声的影响。然后通过非重叠块集的主成分分析(PCA)提取正常的特征向量,以创建嵌造到每个向量的特征向量空间,依次依次映射到形成特征向量空间。通过使用模糊C-means(FCM)聚类,特征向量空间根据特征向量近似程度被划分为两个群集。实验结果对汉昌门土毁的图像表明,这种方法可以简单有效地找到变化区域。

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