IVCVJul 15, 2024

Transformer for Multitemporal Hyperspectral Image Unmixing

arXiv:2407.10427v18 citationsh-index: 22
Originality Incremental advance
AI Analysis

This addresses the challenge of monitoring dynamic surface changes in remote sensing, but it is incremental as it adapts transformers to a specific domain problem.

The paper tackles multitemporal hyperspectral image unmixing by proposing MUFormer, an unsupervised deep learning model with Global Awareness and Change Enhancement Modules, which significantly improves unmixing performance on real and synthetic datasets.

Multitemporal hyperspectral image unmixing (MTHU) holds significant importance in monitoring and analyzing the dynamic changes of surface. However, compared to single-temporal unmixing, the multitemporal approach demands comprehensive consideration of information across different phases, rendering it a greater challenge. To address this challenge, we propose the Multitemporal Hyperspectral Image Unmixing Transformer (MUFormer), an end-to-end unsupervised deep learning model. To effectively perform multitemporal hyperspectral image unmixing, we introduce two key modules: the Global Awareness Module (GAM) and the Change Enhancement Module (CEM). The Global Awareness Module computes self-attention across all phases, facilitating global weight allocation. On the other hand, the Change Enhancement Module dynamically learns local temporal changes by comparing endmember changes between adjacent phases. The synergy between these modules allows for capturing semantic information regarding endmember and abundance changes, thereby enhancing the effectiveness of multitemporal hyperspectral image unmixing. We conducted experiments on one real dataset and two synthetic datasets, demonstrating that our model significantly enhances the effect of multitemporal hyperspectral image unmixing.

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