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Adaptive Fuzzy C-Means Algorithm using the Hybrid Spatial Information for Medical Image Segmentation

机译:混合空间信息的自适应模糊C-均值算法在医学图像分割中的应用

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This paper presents a technique for incorporating different forms of spatial information into the conventional FCM. New modified version of the standard FCM function and a weighted one has been added together to from the modified objective function.. The Euclidian distances are improved to account for the distances of the neighboring pixels. In this hybrid algorithm, the addition of the local spatial information and the modification of the membership are applied in separate steps. However, the distances are computed by replacing the pixel by its neighborhood average to reduce additive noise. Results of clustering and segmentation of synthetic and simulated medical images are presented to compare the performance of the new modified algorithm of hybrid spatial information (HFCM) with the conventional FCM, local spatial information based FCM (SFCM), local membership based FCM (LMFCM), and the Robust spatial data based FCM (RFCM).
机译:本文提出了一种将不同形式的空间信息合并到常规FCM中的技术。标准FCM函数的新修改版本和加权函数已被添加到修改后的目标函数中。改进了欧几里得距离以解决相邻像素的距离。在这种混合算法中,局部空间信息的添加和成员资格的修改在单独的步骤中应用。但是,通过将像素替换为其邻域平均值以减少附加噪声来计算距离。提出了合成和模拟医学图像的聚类和分割结果,以比较新的混合空间信息(HFCM)改进算法与常规FCM,基于局部空间信息的FCM(SFCM),基于局部成员资格的FCM(LMFCM)的性能,以及基于鲁棒空间数据的FCM(RFCM)。

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