Spatial-Spectral Diffusion Contrastive Representation Network for Hyperspectral Image Classification
Yimin Zhu, Linlin Xu

TL;DR
This paper introduces DiffCRN, a novel hyperspectral image classification network combining diffusion models and contrastive learning, with innovative modules for spectral-spatial feature extraction, adaptive feature selection, and improved classification accuracy.
Contribution
The paper proposes a staged architecture with self-attention modules, a new loss function, adaptive time-step selection, and fusion modules, advancing unsupervised hyperspectral image classification.
Findings
Outperforms classical and state-of-the-art models on four HSI datasets.
Achieves higher discriminability and classification accuracy.
Demonstrates effectiveness of the proposed modules in feature learning.
Abstract
Although efficient extraction of discriminative spatial-spectral features is critical for hyperspectral images classification (HSIC), it is difficult to achieve these features due to factors such as the spatial-spectral heterogeneity and noise effect. This paper presents a Spatial-Spectral Diffusion Contrastive Representation Network (DiffCRN), based on denoising diffusion probabilistic model (DDPM) combined with contrastive learning (CL) for HSIC, with the following characteristics. First,to improve spatial-spectral feature representation, instead of adopting the UNets-like structure which is widely used for DDPM, we design a novel staged architecture with spatial self-attention denoising module (SSAD) and spectral group self-attention denoising module (SGSAD) in DiffCRN with improved efficiency for spectral-spatial feature learning. Second, to improve unsupervised feature learning…
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Taxonomy
TopicsRemote-Sensing Image Classification · Domain Adaptation and Few-Shot Learning · Face and Expression Recognition
MethodsDiffusion · Contrastive Learning
