Computers and Systems Department, Electronics Research Institute, Joseph Tito St, El Nozha, Huckstep Cairo, Egypt.
Department of Computer and Software Engineering, Misr University for Science and Technology, Giza, Egypt.
J Digit Imaging. 2022 Oct;35(5):1308-1325. doi: 10.1007/s10278-021-00554-y. Epub 2022 Jun 29.
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.
医学图像融合是一种旨在合并来自同一人体器官不同模式的图像的重要信息的过程,以创建更具信息量的融合图像。近年来,由于深度学习 (DL) 方法的高效率,它们在图像融合领域取得了重大突破。由于其强大的特征提取和数据表示能力,DL 方法在图像融合中已成为一个活跃的研究课题。在这项工作中,堆叠稀疏自编码器 (SSAE),一种通用的深度学习网络类别,被应用于医学图像融合。SSAE 是一种用于无监督特征提取的有效技术。它具有复杂数据表示的高能力。所提出的融合方法如下进行。首先,源图像通过非下采样轮廓变换 (NSCT) 分解为低频和高频系数子带。NSCT 是一种灵活的多尺度分解技术,在多个方面优于传统的分解技术。之后,执行 SSAE 进行特征提取,从高频系数中获得稀疏和深层表示。然后,计算所获得特征的空间频率,以用于高频系数融合。之后,应用基于最大值的融合规则来融合低频子带系数。通过应用逆 NSCT 获得最终的综合图像。该方法已应用于各种医学图像模态组并进行了评估。实验结果证明,该方法可以有效地融合多模态医学图像,同时完美地保留细节信息。