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FUZZY IMAGE SEGMENTATION USING LOCATION AND INTENSITY INFORMATION

机译:使用位置和强度信息进行模糊图像分割

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The segmentation results of any clustering algorithm are very sensitive to the features used in the similarity measure and the object types, which reduce the generalization capability of the algorithm. The previously developed algorithm called image segmentation using fuzzy clustering incorporating spatial information (FCSI) merged the independently segmented results generated by fuzzy clustering-based on pixel intensity and pixel location. The main disadvantages of this algorithm are that a perceptually selected threshold does not consider any semantic information and also produces unpredictable segmentation results for objects (regions) covering the entire image. This paper directly addresses these issues by introducing a new algorithm called fuzzy image segmentation using location and intensity (FSLI) by modifying the original FCSI algorithm. It considers the topological feature namely, connectivity and the similarity based on pixel intensity and surface variation. Qualitative and quantitative results confirm the considerable improvements achieved using the FSLI algorithm compared with FCSI and the fuzzy c-means (FCM) algorithm for all three alternatives, namely clustering using only pixel intensity, pixel location and a combination of the two, for a range of sample of images.
机译:任何聚类算法的分割结果对相似性度量中使用的特征和对象类型非常敏感,从而降低了算法的泛化能力。先前开发的算法,即使用结合了空间信息(FCSI)的模糊聚类的图像分割,将基于像素强度和像素位置的模糊聚类生成的独立分割结果合并在一起。该算法的主要缺点是在感知上选择的阈值不考虑任何语义信息,并且还为覆盖整个图像的对象(区域)产生了不可预测的分割结果。本文通过修改原始的FCSI算法,引入了一种新的算法,即使用位置和强度的模糊图像分割(FSLI),直接解决了这些问题。它考虑了基于像素强度和表面变化的拓扑特征,即连通性和相似性。定性和定量结果证实,与FCSI和模糊c均值(FCM)算法相比,FSLI算法在所有三个备选方案上均取得了显着改善,即在一定范围内仅使用像素强度,像素位置和两者的组合进行聚类图像样本。

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