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Multimodal Medical Image Fusion Using Stacked Auto-encoder in NSCT Domain

轮廓波 人工智能 计算机科学 图像融合 模式识别(心理学) 融合规则 特征提取 自编码 深度学习 融合 编码器 计算机视觉 图像(数学) 小波变换 哲学 操作系统 小波 语言学
作者
Nahed Tawfik,Heba A. Elnemr,Mahmoud Fakhr,Moawad I. Dessouky,Fathi E. Abd El‐Samie
出处
期刊:Journal of Digital Imaging [Springer Science+Business Media]
卷期号:35 (5): 1308-1325 被引量:24
标识
DOI:10.1007/s10278-021-00554-y
摘要

Medical image fusion is a process that aims to merge the important information from images with different modalities of the same organ of the human body to create a more informative fused image. In recent years, deep learning (DL) methods have achieved significant breakthroughs in the field of image fusion because of their great efficiency. The DL methods in image fusion have become an active topic due to their high feature extraction and data representation ability. In this work, stacked sparse auto-encoder (SSAE), a general category of deep neural networks, is exploited in medical image fusion. The SSAE is an efficient technique for unsupervised feature extraction. It has high capability of complex data representation. The proposed fusion method is carried as follows. Firstly, the source images are decomposed into low- and high-frequency coefficient sub-bands with the non-subsampled contourlet transform (NSCT). The NSCT is a flexible multi-scale decomposition technique, and it is superior to traditional decomposition techniques in several aspects. After that, the SSAE is implemented for feature extraction to obtain a sparse and deep representation from high-frequency coefficients. Then, the spatial frequencies are computed for the obtained features to be used for high-frequency coefficient fusion. After that, a maximum-based fusion rule is applied to fuse the low-frequency sub-band coefficients. The final integrated image is acquired by applying the inverse NSCT. The proposed method has been applied and assessed on various groups of medical image modalities. Experimental results prove that the proposed method could effectively merge the multimodal medical images, while preserving the detail information, perfectly.
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