基于空间约束的核质心神经网络图像分割

Dong-Chul Park, Nhon Huu Tran, Dong-Min Woo, Yunsik Lee
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引用次数: 1

摘要

提出了一种基于核的空间约束质心神经网络(K-CNN-S)。提出的K-CNN-S基于质心神经网络(CNN),并利用核方法的优点将输入数据映射到高维特征空间。此外,K-CNN-S采用空间约束来降低图像中的噪声。为了说明K-CNN-S算法的应用,进行了磁共振图像(MRI)分割。基于互联网脑分割库(IBSR)的MRI数据的实验和结果表明,基于K-CNN-S的图像分割方案优于传统的模糊c均值(FCM)、基于核的模糊c均值(K-FCM)和基于核的带空间约束的模糊c均值(K-FCM- s)算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel-Based Centroid Neural Network with Spatial Constraints for Image Segmentation
A kernel-based centroid neural network with spatial constraints (K-CNN-S) is proposed and presented in this paper. The proposed K-CNN-S is based on the centroid neural network (CNN) and also exploits advantages of the kernel method for mapping input data into a higher dimensional feature space. Furthermore, The K-CNN-S adopts the spatial constraints to reduce noise in images. The magnetic resonance image (MRI) segmentation is performed to illustrate the application of the proposed K-CNN-S algorithm. Experiments and results on MRI data from Internet brain segmentation repository (IBSR) demonstrate that image segmentation scheme based on the proposed K-CNN-S outperforms conventional algorithms including fuzzy c-means (FCM), kernel-based fuzzy c-mean (K-FCM), and kernel-based fuzzy c-mean with spatial constraints (K-FCM-S).
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