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SkySense V2: A Unified Foundation Model for Multi-modal Remote Sensing

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arxiv 2507.13812 v1 pith:XGCCRVIR submitted 2025-07-18 cs.CV

SkySense V2: A Unified Foundation Model for Multi-modal Remote Sensing

classification cs.CV
keywords skysensebackbonefoundationmodelremotesensingdataimages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The multi-modal remote sensing foundation model (MM-RSFM) has significantly advanced various Earth observation tasks, such as urban planning, environmental monitoring, and natural disaster management. However, most existing approaches generally require the training of separate backbone networks for each data modality, leading to redundancy and inefficient parameter utilization. Moreover, prevalent pre-training methods typically apply self-supervised learning (SSL) techniques from natural images without adequately accommodating the characteristics of remote sensing (RS) images, such as the complicated semantic distribution within a single RS image. In this work, we present SkySense V2, a unified MM-RSFM that employs a single transformer backbone to handle multiple modalities. This backbone is pre-trained with a novel SSL strategy tailored to the distinct traits of RS data. In particular, SkySense V2 incorporates an innovative adaptive patch merging module and learnable modality prompt tokens to address challenges related to varying resolutions and limited feature diversity across modalities. In additional, we incorporate the mixture of experts (MoE) module to further enhance the performance of the foundation model. SkySense V2 demonstrates impressive generalization abilities through an extensive evaluation involving 16 datasets over 7 tasks, outperforming SkySense by an average of 1.8 points.

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Forward citations

Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. TESSERA v2: Scaling Pixel-wise Earth Foundation Models

    cs.CV 2026-07 conditional novelty 7.0

    Downstream-driven scaling of pixel-wise Barlow Twins EO models favors large encoders and matched data over projectors, and distillation yields compact Matryoshka students that lead multi-task embedding benchmarks.

  2. CBEN -- A Multimodal Machine Learning Dataset for Cloud Robust Remote Sensing Image Understanding

    cs.CV 2026-02 accept novelty 7.0

    CBEN provides paired optical-radar images with cloud occlusion, revealing 23-33 point AP drops in clear-sky trained models and 17-29 point relative gains when models are trained on cloudy data.

  3. Scalable and Trustworthy Earth Observation Foundation Models

    cs.LG 2026-07 conditional novelty 3.0

    Remote-sensing foundation models need domain-specific design and evaluation around measurement physics and decision constraints; benchmark accuracy alone is insufficient for trustworthy EO deployment.