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Two Similarity Measure Methods Based on Human Vision Properties for Image Segmentation Based on Affinity Propagation Clustering

机译:基于亲和力传播聚类的两种基于人类视觉属性的相似度度量方法

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We firstly present an image segmentation method based on affinity propagation clustering which needs not to initialize cluster centers and is more reliable than traditional clustering methods such as K-Means clustering and so on. However, it is very difficult to get good image segmentation results through adjusting the only parameter ȁC;preferenceȁD; of affinity propagation clustering, and sometimes the segmentation results donȁ9;t accord with human vision properties. To tackle the two problems, we propose two similarity measure methods based on human vision properties for measuring the similarities between pairs of data points of an image. The experiment results show that compared with the traditional Euclidean distance, the two similarities proposed can lower the level of difficulty of selecting parameters and make the segmentation results more according with human vision properties.
机译:首先,我们提出了一种基于亲和度传播聚类的图像分割方法,该方法不需要初始化聚类中心,并且比传统聚类方法(如K-Means聚类等)更可靠。然而,仅通过调整参数ȁC;preferenceȁD;来获得良好的图像分割结果是非常困难的。亲和力传播聚类的结果,有时分割结果不符合人类视觉特性。为了解决这两个问题,我们提出了两种基于人类视觉属性的相似度测量方法,用于测量图像数据点对之间的相似度。实验结果表明,与传统的欧几里得距离相比,两者的相似性可以降低参数选择的难度,并使分割结果更加符合人的视觉特性。

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