CVOct 8, 2025

Few-Shot Adaptation Benchmark for Remote Sensing Vision-Language Models

arXiv:2510.07135v1h-index: 36Has Code
Originality Synthesis-oriented
AI Analysis

This work addresses the need for robust few-shot adaptation in remote sensing, but it is incremental as it benchmarks existing methods without introducing new ones.

The authors tackled the problem of evaluating few-shot adaptation methods for Remote Sensing Vision-Language Models (RSVLMs) by creating the first structured benchmark, revealing that models with similar zero-shot performance show varied adaptability and no clear best method exists.

Remote Sensing Vision-Language Models (RSVLMs) have shown remarkable potential thanks to large-scale pretraining, achieving strong zero-shot performance on various tasks. However, their ability to generalize in low-data regimes, such as few-shot learning, remains insufficiently explored. In this work, we present the first structured benchmark for evaluating few-shot adaptation methods on RSVLMs. We conduct comprehensive experiments across ten remote sensing scene classification datasets, applying five widely used few-shot adaptation strategies to three state-of-the-art RSVLMs with varying backbones. Our findings reveal that models with similar zero-shot performance can exhibit markedly different behavior under few-shot adaptation, with some RSVLMs being inherently more amenable to such adaptation than others. The variability of performance and the absence of a clear winner among existing methods highlight the need for the development of more robust methods for few-shot adaptation tailored to RS. To facilitate future research, we provide a reproducible benchmarking framework and open-source code to systematically evaluate RSVLMs under few-shot conditions. The source code is publicly available on Github: https://github.com/elkhouryk/fewshot_RSVLMs

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