Dual Classification Head Self-training Network for Cross-scene Hyperspectral Image Classification
Rong Liu, Junye Liang, Jiaqi Yang, Jiang He, Peng Zhu

TL;DR
This paper introduces DHSNet, a novel dual classification head self-training network for cross-scene hyperspectral image classification, effectively aligning features across domains and improving classification accuracy despite domain shifts.
Contribution
It proposes the first dual classification head self-training strategy for cross-scene HSI classification, enhancing domain adaptation and feature alignment.
Findings
DHSNet outperforms state-of-the-art methods on three datasets.
The central feature attention mechanism improves scene-invariant feature learning.
The approach effectively mitigates domain gaps and pseudo-label errors.
Abstract
Due to the difficulty of obtaining labeled data for hyperspectral images (HSIs), cross-scene classification has emerged as a widely adopted approach in the remote sensing community. It involves training a model using labeled data from a source domain (SD) and unlabeled data from a target domain (TD), followed by inferencing on the TD. However, variations in the reflectance spectrum of the same object between the SD and the TD, as well as differences in the feature distribution of the same land cover class, pose significant challenges to the performance of cross-scene classification. To address this issue, we propose a dual classification head self-training network (DHSNet). This method aligns class-wise features across domains, ensuring that the trained classifier can accurately classify TD data of different classes. We introduce a dual classification head self-training strategy for the…
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Taxonomy
TopicsRemote-Sensing Image Classification
MethodsSoftmax · Attention Is All You Need
