Local-to-Global Cross-Modal Attention-Aware Fusion for HSI-X Semantic Segmentation
Xuming Zhang, Naoto Yokoya, Xingfa Gu, Qingjiu Tian, Lorenzo Bruzzone

TL;DR
This paper introduces LoGoCAF, a novel cross-modal fusion framework combining local and global attention mechanisms for improved hyperspectral image classification with supplementary modalities.
Contribution
The study proposes a new local-to-global encoder with cross-modality modules for enhanced, generalizable HSI-X semantic segmentation performance.
Findings
Achieves superior accuracy on benchmark datasets.
Demonstrates strong generalization across different modalities.
Outperforms existing fusion methods in efficiency and effectiveness.
Abstract
Hyperspectral image (HSI) classification has recently reached its performance bottleneck. Multimodal data fusion is emerging as a promising approach to overcome this bottleneck by providing rich complementary information from the supplementary modality (X-modality). However, achieving comprehensive cross-modal interaction and fusion that can be generalized across different sensing modalities is challenging due to the disparity in imaging sensors, resolution, and content of different modalities. In this study, we propose a Local-to-Global Cross-modal Attention-aware Fusion (LoGoCAF) framework for HSI-X classification that jointly considers efficiency, accuracy, and generalizability. LoGoCAF adopts a pixel-to-pixel two-branch semantic segmentation architecture to learn information from HSI and X modalities. The pipeline of LoGoCAF consists of a local-to-global encoder and a lightweight…
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Taxonomy
TopicsMedical Imaging and Analysis · Advanced Neural Network Applications · Medical Image Segmentation Techniques
MethodsFeatures Explanation Method
