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Maximizing Information of Multimodality Brain Image Fusion Using Curvelet Transform with Genetic Algorithm

机译:基于遗传算法的曲波变换最大化多模态脑图像融合信息

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The existing medical image fusion techniques lack of the ability to produce fused image that can maintain fine details of information content from the source images. In this paper, we introduce curve let transform and Genetic Algorithm (GA). The curve let transform performs better than wavelet transform in preserving visual image content particularly the edges. The use of GA can further refine the features of the fused image, and solve the existing uncertainty and ambiguity in the smooth region of the input image. Our method is beneficial to image fusion techniques whose applications rely on the source information of local images. Our experimental results indicate that our method performs betters than baseline methods in terms of quantitative image fusion performance.
机译:现有的医学图像融合技术缺乏产生融合图像的能力,该融合图像可以维持来自源图像的信息内容的精细细节。在本文中,我们介绍了曲线让变换和遗传算法(GA)。在保留视觉图像内容(尤其是边缘)方面,让让曲线进行的变换比小波变换要好。 GA的使用可以进一步细化融合图像的特征,并解决输入图像平滑区域中现有的不确定性和模糊性。我们的方法有益于图像融合技术,其应用依赖于本地图像的源信息。我们的实验结果表明,在定量图像融合性能方面,我们的方法比基线方法表现更好。

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