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Mask Approximation Net: A Novel Diffusion Model Approach for Remote Sensing Change Captioning

IEEE Transactions on Geoscience and Remote Sensing (TGRS), 2024
Main:9 Pages
6 Figures
Bibliography:2 Pages
Abstract

Remote sensing image change description represents an innovative multimodal task within the realm of remote sensingthis http URLtask not only facilitates the detection of alterations in surface conditions, but also provides comprehensive descriptions of these changes, thereby improving human interpretability andthis http URLdeep learning methods typically adopt a three stage framework consisting of feature extraction, feature fusion, and change localization, followed by text generation. Most approaches focus heavily on designing complex network modules but lack solid theoretical guidance, relying instead on extensive empirical experimentation and iterative tuning of network components. This experience-driven design paradigm may lead to overfitting and design bottlenecks, thereby limiting the model's generalizability andthis http URLaddress these limitations, this paper proposes a paradigm that shift towards data distribution learning using diffusion models, reinforced by frequency-domain noise filtering, to provide a theoretically motivated and practically effective solution to multimodal remote sensing changethis http URLproposed method primarily includes a simple multi-scale change detection module, whose output features are subsequently refined by a well-designed diffusionthis http URL, we introduce a frequency-guided complex filter module to boost the model performance by managing high-frequency noise throughout the diffusion process. We validate the effectiveness of our proposed method across several datasets for remote sensing change detection and description, showcasing its superior performance compared to existing techniques. The code will be available at \href{this https URL}{MaskApproxNet}.

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