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A Fuzzy-Entropy and Image Fusion Based Multiple Thresholding Method for the Brain Tumor Segmentation

机译:基于模糊熵和图像融合的脑肿瘤分割的多阈值方法

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This research presented a new segmentation method based on fuzzy set, entropy and image fusion to analyze brain tumors from magnetic resonance imaging (MRI). Using fuzzy set, one can tackle the problem of uncertainty representation in gray levels of MRIs during the segmentation process. This uncertainty in their gray levels occurred due to poor illumination of images. To resolve this issue, this study focused on fuzzification of gray levels and assignment of membership degrees based on membership functions. Each fuzzified gray level value was quantified using entropy. The proposed method generated multiple thresholds based on maximum entropy values of gray levels. These thresholds generated multiple segmented images with different features. Finally, image fusion operation was performed on multiple segmented images to highlight all the critical features of brain tumors. Fusion images were compared with the segmented images obtained from four additional methods, the multilevel threshold method, adaptive threshold method, K-means clustering algorithm and fuzzy c-means algorithm. The performance evaluation metrics indicated the effectiveness of the proposed method over these existing methods.
机译:本研究介绍了一种基于模糊集,熵和图像融合的新分割方法,从磁共振成像(MRI)分析脑肿瘤。使用模糊集,可以在分割过程中解决MRIS的灰度级别的不确定性表示问题。由于图像的照明差,发生了灰度水平的这种不确定性。要解决此问题,本研究专注于灰色级别的模糊和基于隶属函数的成员学位分配。使用熵量化每个模糊的灰度级值。该方法基于灰度级的最大熵值生成多个阈值。这些阈值生成具有不同特征的多个分段图像。最后,对多个分段图像执行图像融合操作,以突出脑肿瘤的所有关键特征。将融合图像与从四种附加方法中获得的分段图像进行比较,多级阈值方法,自适应阈值方法,k均值聚类算法和模糊C均值算法。性能评估度量指出了所提出的方法对这些现有方法的有效性。

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