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A comparative study on Kapur's and Tsallis entropy for multilevel thresholding of MR images via particle swarm optimisation technique

机译:Kapur和Tsallis熵通过粒子群优化技术进行MR图像多级阈值化的比较研究。

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The present paper explores both the Kapur's and Tsallis entropy for a three level thresholding of brain MR images. The optimal thresholds are obtained by the maximisation of these entropies using a population-based search technique called as particle swarm optimisation (PSO). The algorithm is implemented for the segregation of various tissue constituents, i.e., cerebral spinal fluid (CSF), white matter (WM) and grey matter (GM) region from the simulated images obtained from the brain web database. The efficacy of the thresholding methods was evaluated by the measure of the spatial overlap, i.e., the Dice coefficient (Dice). The experimental results show that: 1) for both the WM and CSF the Tsallis entropy outperforms the Kapur's entropy by achieving an average value of 0.967279 and 0.878031 respectively; 2) for the GM, the Kapur's entropy is more beneficial which is duly justified by the mean value of Dice which was 0.851025 for this case.
机译:本文探讨了脑磁共振图像三级阈值的Kapur和Tsallis熵。使用称为粒子群优化(PSO)的基于种群的搜索技术,通过使这些熵最大化来获得最佳阈值。该算法用于从大脑网络数据库获得的模拟图像中分离各种组织成分,即脑脊髓液(CSF),白质(WM)和灰质(GM)区域。通过测量空间重叠即Dice系数(Dice)来评估阈值方法的功效。实验结果表明:1)对于WM和CSF,Tsallis熵均超过Kapur熵,分别达到0.967279和0.878031的平均值。 2)对于GM,Kapur的熵更有利,这可以通过Dice的平均值0.851025适当地证明。

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