The Review of Feature Level Fusion of Multi-Focused Images Using Wavelets

K. Kannan, S. Perumal, K. Arulmozhi
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引用次数: 10

Abstract

Abstract: The fast development of digital image processing leads to the growth of feature extraction of images which leads to the development of Image fusion. Image fusion is defined as the process of combining two or more different images into a new single image retaining important features from each image with extended information content. There are two approaches to image fusion, namely Spatial Fusion and Transform fusion. In Spatial fusion, the pixel values from the source images are directly summed up and taken average to form the pixel of the composite image at that location. The most common widely used transform for image fusion at multi scale is Discrete Wavelet Transform since it minimizes structural distortions. But, wavelet transform suffers from lack of shift invariance and poor directional selectivity. These two disadvantages are overcome by Stationary and Complex Wavelet Transform. But they are more expansive and this can be compromised by Double Density Wavelet Transform. Image fusion can be performed using three levels namely Pixel, feature and decision level. This paper evaluates the performance of feature level fusion of multi focused images using Discrete, Stationary and Dual Tree Complex wavelet transform in terms of various performance measures.
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基于小波的多聚焦图像特征级融合研究进展
摘要:数字图像处理技术的快速发展带动了图像特征提取技术的发展,从而带动了图像融合技术的发展。图像融合被定义为将两个或多个不同的图像组合成一个新的单一图像的过程,该图像保留了每个图像的重要特征,并具有扩展的信息内容。图像融合有两种方法,即空间融合和变换融合。在空间融合中,直接对源图像的像素值进行求和和平均,形成该位置的合成图像像素。在多尺度图像融合中应用最广泛的是离散小波变换,因为它可以最大限度地减少结构失真。但小波变换存在平移不变性和方向选择性差的缺点。平稳小波变换和复小波变换克服了这两个缺点。但它们更广泛,这可以通过双密度小波变换来解决。图像融合可以通过像素、特征和决策三个层次进行。本文从各种性能指标方面评价了离散、平稳和对偶树复小波变换在多聚焦图像特征级融合中的性能。
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