论文标题
基于kullback-leibler divergence divergence $ c $ -MEANS聚类包含形态重建和小波框架,用于图像分割
Kullback-Leibler Divergence-Based Fuzzy $C$-Means Clustering Incorporating Morphological Reconstruction and Wavelet Frames for Image Segmentation
论文作者
论文摘要
尽管图像的空间信息通常会增强模糊c均值(FCM)算法的鲁棒性,但它大大提高了图像分割的计算成本。为了在细分性能和聚类速度之间取得良好的权衡,我们提出了基于Kullback-Leibler(KL)基于差异的FCM算法,通过结合了紧密的小波框架变换和形态重建操作。为了增强FCM的鲁棒性,首先使用形态重建进行了观察到的图像。使用紧密的小波框架系统来分解观察到的图像和过滤图像,以形成其特征集。考虑到这些特征集作为聚类的数据,提出了一种修改的FCM算法,该算法将分区矩阵中的KL差异项引入其目标函数。 KL Divergence术语旨在使每个图像像素更接近其邻居的成员资格度,这使成员资格分区变得更合适,并且FCM的参数设置变得简化。根据获得的分区矩阵和原型,通过最小化修改后的目标函数的逆过程来重建分段的特征集。为了修改重建过程中产生的异常特征,将每个重建的特征都重新分配到最接近的原型。结果,基于KL差异的FCM的分割精度得到了进一步提高。更重要的是,通过使用紧密的小波框架重建操作来重建分段的图像。最后,报道了应对合成,医学和颜色图像的支持实验。实验结果表明,所提出的算法效果很好,并且比其他比较算法具有更好的分割性能。此外,所提出的算法所需的时间比大多数与FCM相关的算法更少。
Although spatial information of images usually enhance the robustness of the Fuzzy C-Means (FCM) algorithm, it greatly increases the computational costs for image segmentation. To achieve a sound trade-off between the segmentation performance and the speed of clustering, we come up with a Kullback-Leibler (KL) divergence-based FCM algorithm by incorporating a tight wavelet frame transform and a morphological reconstruction operation. To enhance FCM's robustness, an observed image is first filtered by using the morphological reconstruction. A tight wavelet frame system is employed to decompose the observed and filtered images so as to form their feature sets. Considering these feature sets as data of clustering, an modified FCM algorithm is proposed, which introduces a KL divergence term in the partition matrix into its objective function. The KL divergence term aims to make membership degrees of each image pixel closer to those of its neighbors, which brings that the membership partition becomes more suitable and the parameter setting of FCM becomes simplified. On the basis of the obtained partition matrix and prototypes, the segmented feature set is reconstructed by minimizing the inverse process of the modified objective function. To modify abnormal features produced in the reconstruction process, each reconstructed feature is reassigned to the closest prototype. As a result, the segmentation accuracy of KL divergence-based FCM is further improved. What's more, the segmented image is reconstructed by using a tight wavelet frame reconstruction operation. Finally, supporting experiments coping with synthetic, medical and color images are reported. Experimental results exhibit that the proposed algorithm works well and comes with better segmentation performance than other comparative algorithms. Moreover, the proposed algorithm requires less time than most of the FCM-related algorithms.