A significant number of researchers have recently applied deep learning methods to image fusion. However, most of these works either require a large amount of training data or depend on pre-trained models or frameworks. This inevitably encounters a shortage of training data or a mismatch between the framework and the actual problem. Recently, the publication of Deep Image Prior (DIP) method made it possible to do image restoration totally training-data-free. However, the original design of DIP is hard to be generalized to multi-image processing problems. This paper introduces a novel loss calculation structure, in the framework of DIP, while formulating image fusion as an inverse problem. This enables the extension of DIP to general multisensor/multifocus image fusion problems. Secondly, we propose a multi-channel approach to improve the effect of DIP. Finally, an evaluation is conducted using several commonly used image fusion assessment metrics. The results are compared with state-of-the-art traditional and deep learning image fusion methods. Our method outperforms previous techniques for a range of metrics. In particular, it is shown to provide the best objective results for most metrics when applied to medical images.
翻译:大量研究人员最近对图像融合采用了深层次的学习方法,然而,大多数这类工作要么需要大量的培训数据,要么依赖于预先培训的模型或框架。这不可避免地会遇到培训数据短缺或框架和实际问题之间的不匹配。最近,出版《深图像前期(DIP)方法》使图像恢复完全没有培训数据。然而,DIP的最初设计很难被普遍化为多图像处理问题。本文在DIP框架内引入了一个新的损失计算结构,同时将图像融合作为反面问题。这使得DIP能够扩展至一般多传感器/多焦图像融合问题。第二,我们建议采用多通道方法来改进DIP的效果。最后,利用一些常用的图像融合评估指标进行评估。结果与最新传统和深层学习图像融合方法进行比较。我们的方法比照了以前的一系列计量方法。特别是,它展示了在应用医学图像时,大多数计量方法的最佳客观结果。