Optimization Techniques for the Multilevel Thresholding of the Medical Images

T. Kaur, B. Saini, Savita Gupta
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引用次数: 4

Abstract

Multilevel thresholding is segmenting the image into several distinct regions. Medical data like magnetic resonance images (MRI) contain important clinical information that is crucial for diagnosis. Hence, automatic segregation of tissue constituents is of key interest to clinician. In the chapter, standard entropies (i.e., Kapur and Tsallis) are explored for thresholding of brain MR images. The optimal thresholds are obtained by the maximization of these entropies using the particle swarm optimization (PSO) and the BAT optimization approach. The techniques are implemented for the segregation of various tissue constituents (i.e., cerebral spinal fluid [CSF], white matter [WM], and gray matter [GM]) from simulated images obtained from the brain web database. The efficacy of the thresholding technique is evaluated by the Dice coefficient (Dice). The results demonstrate that Tsallis' entropy is superior to the Kapur's entropy for the segmentation CSF and WM. Moreover, entropy maximization using BAT algorithm attains a higher Dice in contrast to PSO.
医学图像多层次阈值分割优化技术
多层阈值分割是将图像分割成几个不同的区域。磁共振成像(MRI)等医学数据包含重要的临床信息,对诊断至关重要。因此,组织成分的自动分离是临床医生的关键兴趣。在本章中,标准熵(即Kapur和Tsallis)探讨了脑MR图像的阈值分割。利用粒子群优化和BAT优化方法,将这些熵最大化,从而得到最优阈值。该技术用于从从脑网络数据库获得的模拟图像中分离各种组织成分(即脑脊液[CSF]、白质[WM]和灰质[GM])。阈值技术的有效性通过骰子系数(Dice)来评价。结果表明,对于分割CSF和WM, Tsallis熵优于Kapur熵。此外,与PSO相比,使用BAT算法的熵最大化获得了更高的Dice。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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