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An Improved Firefly Algorithm-Based 2-D Image Thresholding for Brain Image Fusion

机译:一种改进的基于萤火虫算法的脑图像融合的二维图像阈值

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In this article, an attempt is made to diagnose brain diseases like neoplastic, cerebrovascular, Alzheimer's, and sarcomas by the effective fusion of two images. The two images are fused in three steps. Step 1. Segmentation: The images are segmented on the basis of optimal thresholding, the thresholds are optimized with an improved firefly algorithm (pFA) by assuming Renyi entropy as an objective function. Earlier, image thresholding was performed with a 1-D histogram, but it has been recently observed that a 2-D histogram-based thresholding is better. Step 2: the segmented features are extracted with the scale invariant feature transform (SIFT) algorithm. The SIFT algorithm is good in extracting the features even after image rotation and scaling. Step 3: The fusion rules are made on the basis of an interval type-2 fuzzy set (IT2FL), where uncertainty effects are minimized unlike type-1. The novelty of the proposed work is tested on different benchmark image fusion data sets and has proven better in all measuring parameters.
机译:在本文中,通过有效融合了两种图像,尝试诊断肿瘤,脑血管,阿尔茨海默氏症等脑疾病。这两个图像分三个步骤融合。步骤1.分割:通过最佳阈值处理来分割图像,通过假设瑞尼尼熵作为目标函数,用改进的萤火虫算法(PFA)来优化阈值。早先,使用1-D直方图执行图像阈值处理,但最近已经观察到基于2-D直方图的阈值率更好。步骤2:用尺度不变特征变换(SIFT)算法提取分段功能。即使在图像旋转和缩放之后,SIFT算法也很好地提取功能。步骤3:融合规则是基于间隔类型-2模糊集(IT2FL)进行的,其中不确定效果与类型-1不同。在不同的基准图像融合数据集上测试所提出的工作的新颖性,并在所有测量参数中证明更好。

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