IEEE Trans Med Imaging. 2023 Nov;42(11):3348-3361. doi: 10.1109/TMI.2023.3283517. Epub 2023 Oct 27.
Multimodal medical image fusion (MMIF) is highly significant in such fields as disease diagnosis and treatment. The traditional MMIF methods are difficult to provide satisfactory fusion accuracy and robustness due to the influence of such possible human-crafted components as image transform and fusion strategies. Existing deep learning based fusion methods are generally difficult to ensure image fusion effect due to the adoption of a human-designed network structure and a relatively simple loss function and the ignorance of human visual characteristics during weight learning. To address these issues, we have presented the foveated differentiable architecture search (F-DARTS) based unsupervised MMIF method. In this method, the foveation operator is introduced into the weight learning process to fully explore human visual characteristics for the effective image fusion. Meanwhile, a distinctive unsupervised loss function is designed for network training by integrating mutual information, sum of the correlations of differences, structural similarity and edge preservation value. Based on the presented foveation operator and loss function, an end-to-end encoder-decoder network architecture will be searched using the F-DARTS to produce the fused image. Experimental results on three multimodal medical image datasets demonstrate that the F-DARTS performs better than several traditional and deep learning based fusion methods by providing visually superior fused results and better objective evaluation metrics.
多模态医学图像融合 (MMIF) 在疾病诊断和治疗等领域具有重要意义。传统的 MMIF 方法由于受到图像变换和融合策略等可能人为设计成分的影响,难以提供令人满意的融合精度和鲁棒性。现有的基于深度学习的融合方法通常由于采用了人为设计的网络结构和相对简单的损失函数,以及在权重学习过程中忽略了人类视觉特征,难以保证图像融合效果。针对这些问题,我们提出了基于注意的可微分架构搜索 (F-DARTS) 的无监督 MMIF 方法。在该方法中,引入注意算子到权重学习过程中,充分挖掘人类视觉特征,实现有效的图像融合。同时,通过集成互信息、差异相关和和结构相似性和边缘保持值,设计了一种独特的无监督损失函数用于网络训练。基于提出的注意算子和损失函数,使用 F-DARTS 搜索端到端的编码器-解码器网络架构,生成融合图像。在三个多模态医学图像数据集上的实验结果表明,与几种传统和基于深度学习的融合方法相比,F-DARTS 提供了视觉上更优的融合结果和更好的客观评价指标。