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Brain MR images segmentation using statistical ratio: mapping between watershed and competitive Hopfield clustering network algorithms.

机译:使用统计比率进行脑MR图像分割:分水岭和竞争性Hopfield聚类网络算法之间的映射。

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摘要

Conventional watershed segmentation methods invariably produce over-segmented images due to the presence of noise or local irregularities in the source images. In this paper, a robust medical image segmentation technique is proposed, which combines watershed segmentation and the competitive Hopfield clustering network (CHCN) algorithm to minimize undesirable over-segmentation. In the proposed method, a region merging method is presented, which is based on employing the region adjacency graph (RAG) to improve the quality of watershed segmentation. The relation of inter-region similarities is then investigated using image mapping in the watershed and CHCN images to determine more appropriate region merging. The performance of the proposed technique is presented through quantitative and qualitative validation experiments on benchmark images. Significant and promising segmentation results were achieved on brain phantom simulated data.
机译:由于源图像中存在噪声或局部不规则,传统的分水岭分割方法总是产生过分的图像。本文提出了一种鲁棒的医学图像分割技术,该技术结合了分水岭分割和竞争性Hopfield聚类网络(CHCN)算法,以最大程度地减少不必要的过度分割。在该方法中,提出了一种基于区域邻接图(RAG)提高分水岭分割质量的区域合并方法。然后使用分水岭和CHCN图像中的图像映射研究区域间相似性的关系,以确定更合适的区域合并。通过对基准图像进行定量和定性验证实验,提出了所提出技术的性能。在脑模型仿真数据上获得了重要且有希望的分割结果。

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