DT-CWT: Feature level image fusion based on dual-tree complex wavelet transform

S. P. Prashanth Kumar, Maruthi G, Asst. Professor
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引用次数: 10

Abstract

Image fusion is the process of combining information from two or more sensed or acquired images into a single composite image that is more informative and becomes more suitable for visual processing or computer processing. Image fusion fully utilizes much complementary and redundant information of the original images. The aim of image fusion is to integrate complementary and redundant information from multiple images to create a composite image that contains a better description of the scene than any of the individual source images. The objective is to reduce uncertainty, minimize redundancy in the output, and maximize relevant information pertaining to an application or a task. This paper focuses on feature level image fusion based on dual-tree complex wavelet transform (DT-CWT). A dual-tree complex wavelet transforms and watershed transform is used to segment the features of the input images, either jointly or separately, to produce the region map. Characteristics of each region are calculated and a region-based approach is used to fuse the images, region by region. The images used are already registered. Misregistration is a major source of error in image fusion.
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DT-CWT:基于双树复小波变换的特征级图像融合
图像融合是将来自两个或多个感测或获取的图像的信息组合成一个信息量更大且更适合于视觉处理或计算机处理的单个复合图像的过程。图像融合充分利用了原始图像的大量互补和冗余信息。图像融合的目的是将来自多个图像的互补和冗余信息整合在一起,以创建一个复合图像,该图像比任何单个源图像都能更好地描述场景。目标是减少不确定性,最小化输出中的冗余,并最大化与应用程序或任务相关的信息。研究了基于双树复小波变换(DT-CWT)的特征级图像融合。采用双树复小波变换和分水岭变换对输入图像的特征进行联合或分离分割,得到区域图。计算每个区域的特征,并使用基于区域的方法逐区域融合图像。使用的图像已经注册。配准错误是图像融合的主要误差来源。
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