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A Deep Equilibrium Network for Hyperspectral Unmixing

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Hyperspectral unmixing (HU) is crucial for analyzing hyperspectral imagery, yet achieving accurate unmixing remains challenging. While traditional methods struggle to effectively model complex spectral-spatial features, deep learning approaches often lack physical interpretability. Unrolling-based methods, despite offering network interpretability, inadequately exploit spectral-spatial information and incur high memory costs and numerical precision issues during backpropagation. To address these limitations, we propose DEQ-Unmix, which reformulates abundance estimation as a deep equilibrium model, enabling efficient constant-memory training via implicit differentiation. It replaces the gradient operator of the data reconstruction term with a trainable convolutional network to capture spectral-spatial information. By leveraging implicit differentiation, DEQ-Unmix enables efficient and constant-memory backpropagation. Experiments on synthetic and two real-world datasets demonstrate that DEQ-Unmix achieves superior unmixing performance while maintaining constant memory cost.

Chentong Wang, Jincheng Gao, Fei Zhu, Jie Chen• 2026

Related benchmarks

TaskDatasetResultRank
Hyperspectral UnmixingSamson
Mean Spectral Angle Distance (SAD)0.0279
15
Hyperspectral UnmixingApex
RMSE (Mean)0.1077
15
Hyperspectral UnmixingSynthetic Dataset SNR=15 dB
aRMSE0.047
7
Hyperspectral UnmixingSynthetic Dataset SNR=30 dB
aRMSE0.0441
7
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