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首页> 外文期刊>Journal of visual communication & image representation >An optimized non-subsampled shearlet transform-based image fusion using Hessian features and unsharp masking
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An optimized non-subsampled shearlet transform-based image fusion using Hessian features and unsharp masking

机译:使用Hessian特征和锐化蒙版的优化的基于非下采样的Slicelet变换的图像融合

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摘要

Existing image fusion approaches are not so efficient to seize significant edges, texture and fine features of the source images due to ineffective and non-adaptive fusion structure. Also for objective evaluation of fusion algorithms, there is a need of a metric to measure source image features which are preserved in the fused image. To address these issues, an optimized non-subsampled shearlet transform (NSST) is developed, which is applied to decompose the source images into low- and high frequency bands. The low frequency bands are fused using proposed descriptor obtained from superposition of scale multiplied Canny edge detector features and Hessian features. The high frequency bands are fused using unsharp masking based fusion rule. Moreover, a metric Q(E) is formulated on the basis of Karhunen-Loeve transform (KLT). The information of image pixel variance for both source and fused images can be measured by using the proposed metric Q(E), and it gives an indication of the amount of variance information transferred from the source images to the fused image. Both subjective and objective analysis show the efficacy of the proposed fusion structure and the metric Q(E). (C) 2018 Elsevier Inc. All rights reserved.
机译:现有的图像融合方法由于无效且非自适应的融合结构而无法有效地抓住源图像的显着边缘,纹理和精细特征。同样对于融合算法的客观评估,需要一种度量以测量保留在融合图像中的源图像特征。为了解决这些问题,开发了一种优化的非下采样的小波变换(NSST),该变换可用于将源图像分解为低频带和高频带。使用从比例乘以Canny边缘检测器特征和Hessian特征的叠加获得的拟议描述符中融合低频带。使用基于锐化掩膜的融合规则来融合高频带。此外,基于Karhunen-Loeve变换(KLT)制定了度量Q(E)。可以通过使用建议的度量Q(E)来测量源图像和融合图像的图像像素方差信息,它可以指示从源图像传输到融合图像的方差信息量。主观和客观分析均显示了所提出的融合结构和度量Q(E)的功效。 (C)2018 Elsevier Inc.保留所有权利。

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