探索多模态图像融合的协同高阶交互作用

Man Zhou;Naishan Zheng;Xuanhua He;Danfeng Hong;Jocelyn Chanussot
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摘要

多模态图像融合的目的是通过对多源图像的跨模态互补信息进行融合和区分,生成融合图像。虽然具有全局空间相互作用的交叉注意机制看起来很有希望,但它只捕获了二阶空间相互作用,而忽略了空间和通道维度上的高阶相互作用。这一限制阻碍了利用多模式之间的协同作用。为了弥补这一差距,我们引入了一个协同高阶交互范式(SHIP),旨在系统地研究多模态图像之间的空间细粒度和全球统计协作,跨越两个基本维度:我们通过元素乘法构建空间细粒度交互,在数学上等同于全局交互,然后通过迭代聚合和进化互补信息来培养高阶格式,从而提高效率和灵活性。2)通道维度:在一阶统计量(均值)的通道交互基础上,我们设计了高阶通道交互,以促进基于全局统计的源图像之间相互依赖关系的识别。我们进一步介绍了SHIP模型的一个增强版本,称为ship++,它通过跨阶注意演化机制、跨阶信息集成机制和剩余信息记忆机制增强了跨模态信息交互表示。利用高阶相互作用显著增强了我们的模型利用多模态协同作用的能力,领先于最先进的替代方案,如在两个重要的多模态图像融合任务(泛锐化、红外和可见光图像融合)中跨各种基准的综合实验所示。
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Probing Synergistic High-Order Interaction for Multi-Modal Image Fusion
Multi-modal image fusion aims to generate a fused image by integrating and distinguishing the cross-modality complementary information from multiple source images. While the cross-attention mechanism with global spatial interactions appears promising, it only captures second-order spatial interactions, neglecting higher-order interactions in both spatial and channel dimensions. This limitation hampers the exploitation of synergies between multi-modalities. To bridge this gap, we introduce a Synergistic High-order Interaction Paradigm (SHIP), designed to systematically investigate spatial fine-grained and global statistics collaborations between the multi-modal images across two fundamental dimensions: 1) Spatial dimension : we construct spatial fine-grained interactions through element-wise multiplication, mathematically equivalent to global interactions, and then foster high-order formats by iteratively aggregating and evolving complementary information, enhancing both efficiency and flexibility. 2) Channel dimension : expanding on channel interactions with first-order statistics (mean), we devise high-order channel interactions to facilitate the discernment of inter-dependencies between source images based on global statistics. We further introduce an enhanced version of the SHIP model, called SHIP++ that enhances the cross-modality information interaction representation by the cross-order attention evolving mechanism, cross-order information integration, and residual information memorizing mechanism. Harnessing high-order interactions significantly enhances our model’s ability to exploit multi-modal synergies, leading in superior performance over state-of-the-art alternatives, as shown through comprehensive experiments across various benchmarks in two significant multi-modal image fusion tasks: pan-sharpening, and infrared and visible image fusion.
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