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Kernel Fuzzy Similarity Measure-Based Spectral Clustering for Image Segmentation

机译:基于核模糊相似度度量的谱聚类

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Spectral clustering has been successfully used in the field of pattern recognition and image processing. The efficiency of spectral clustering, however, depends heavily on the similarity measure adopted. A widely used similarity measure is the Gaussian kernel function where Euclidean distance is used. Unfortunately, the Gaussian kernel function is parameter sensitive and the Euclidean distance is usually not suitable to the complex distribution data. In this paper, a novel similarity measure called kernel fuzzy similarity measure is proposed first, Then this novel measure is integrated into spectral clustering to get a new clustering method: kernel fuzzy similarity based spectral clustering (KFSC). To alleviate the computational complexity of KFSC on image segmentation, Nystroem method is used in KFSC. At last, the experiments on three synthetic texture images are made, and the results demonstrate the effectiveness of the proposed algorithm.
机译:光谱聚类已经成功地用于模式识别和图像处理领域。但是,频谱聚类的效率在很大程度上取决于所采用的相似性度量。广泛使用的相似性度量是使用欧几里得距离的高斯核函数。不幸的是,高斯核函数对参数敏感,并且欧几里得距离通常不适用于复杂的分布数据。本文首先提出了一种新的相似度度量,称为核模糊相似度度量,然后将该新度量集成到谱聚类中得到了一种新的聚类方法:基于核模糊相似度的谱聚类(KFSC)。为了减轻KFSC在图像分割上的计算复杂度,在NFS中使用Nystroem方法。最后,对三个合成纹理图像进行了实验,结果证明了该算法的有效性。

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