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Main Authors: Zhang, Yuxiang, Li, Wei, Zhang, Mengmeng, Han, Jiawei, Tao, Ran, Liang, Shunlin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.01731
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author Zhang, Yuxiang
Li, Wei
Zhang, Mengmeng
Han, Jiawei
Tao, Ran
Liang, Shunlin
author_facet Zhang, Yuxiang
Li, Wei
Zhang, Mengmeng
Han, Jiawei
Tao, Ran
Liang, Shunlin
contents Recent advances in Remote Sensing Foundation Models (RSFMs) have led to significant breakthroughs in the field. While many RSFMs have been pretrained with massive optical imagery, more multispectral/hyperspectral data remain lack of the corresponding foundation models. To leverage the advantages of spectral imagery in earth observation, we explore whether existing RSFMs can be effectively adapted to process diverse spectral modalities without requiring extensive spectral pretraining. In response to this challenge, we proposed SpectralX, an innovative parameter-efficient fine-tuning framework that adapt existing RSFMs as backbone while introducing a two-stage training approach to handle various spectral inputs, thereby significantly improving domain generalization performance. In the first stage, we employ a masked-reconstruction task and design a specialized Hyper Tokenizer (HyperT) to extract attribute tokens from both spatial and spectral dimensions. Simultaneously, we develop an Attribute-oriented Mixture of Adapter (AoMoA) that dynamically aggregates multi-attribute expert knowledge while performing layer-wise fine-tuning. With semantic segmentation as downstream task in the second stage, we insert an Attribute-refined Adapter (Are-adapter) into the first stage framework. By iteratively querying low-level semantic features with high-level representations, the model learns to focus on task-beneficial attributes, enabling customized adjustment of RSFMs. Following this two-phase adaptation process, SpectralX is capable of interpreting spectral imagery from new regions or seasons. The codes will be available from the website: https://github.com/YuxiangZhang-BIT.
format Preprint
id arxiv_https___arxiv_org_abs_2508_01731
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SpectralX: Parameter-efficient Domain Generalization for Spectral Remote Sensing Foundation Models
Zhang, Yuxiang
Li, Wei
Zhang, Mengmeng
Han, Jiawei
Tao, Ran
Liang, Shunlin
Computer Vision and Pattern Recognition
Recent advances in Remote Sensing Foundation Models (RSFMs) have led to significant breakthroughs in the field. While many RSFMs have been pretrained with massive optical imagery, more multispectral/hyperspectral data remain lack of the corresponding foundation models. To leverage the advantages of spectral imagery in earth observation, we explore whether existing RSFMs can be effectively adapted to process diverse spectral modalities without requiring extensive spectral pretraining. In response to this challenge, we proposed SpectralX, an innovative parameter-efficient fine-tuning framework that adapt existing RSFMs as backbone while introducing a two-stage training approach to handle various spectral inputs, thereby significantly improving domain generalization performance. In the first stage, we employ a masked-reconstruction task and design a specialized Hyper Tokenizer (HyperT) to extract attribute tokens from both spatial and spectral dimensions. Simultaneously, we develop an Attribute-oriented Mixture of Adapter (AoMoA) that dynamically aggregates multi-attribute expert knowledge while performing layer-wise fine-tuning. With semantic segmentation as downstream task in the second stage, we insert an Attribute-refined Adapter (Are-adapter) into the first stage framework. By iteratively querying low-level semantic features with high-level representations, the model learns to focus on task-beneficial attributes, enabling customized adjustment of RSFMs. Following this two-phase adaptation process, SpectralX is capable of interpreting spectral imagery from new regions or seasons. The codes will be available from the website: https://github.com/YuxiangZhang-BIT.
title SpectralX: Parameter-efficient Domain Generalization for Spectral Remote Sensing Foundation Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.01731