IVLGMar 5, 2025

Tackling Few-Shot Segmentation in Remote Sensing via Inpainting Diffusion Model

arXiv:2503.03785v12 citationsh-index: 3
Originality Incremental advance
AI Analysis

This addresses the high cost of annotated data in remote sensing by providing a simple method to mitigate overfitting and improve segmentation for novel classes.

The paper tackles the problem of few-shot segmentation in remote sensing by using an inpainting diffusion model to generate diverse variations of novel-class objects from limited examples, which significantly enhances segmentation performance in low-data regimes.

Limited data is a common problem in remote sensing due to the high cost of obtaining annotated samples. In the few-shot segmentation task, models are typically trained on base classes with abundant annotations and later adapted to novel classes with limited examples. However, this often necessitates specialized model architectures or complex training strategies. Instead, we propose a simple approach that leverages diffusion models to generate diverse variations of novel-class objects within a given scene, conditioned by the limited examples of the novel classes. By framing the problem as an image inpainting task, we synthesize plausible instances of novel classes under various environments, effectively increasing the number of samples for the novel classes and mitigating overfitting. The generated samples are then assessed using a cosine similarity metric to ensure semantic consistency with the novel classes. Additionally, we employ Segment Anything Model (SAM) to segment the generated samples and obtain precise annotations. By using high-quality synthetic data, we can directly fine-tune off-the-shelf segmentation models. Experimental results demonstrate that our method significantly enhances segmentation performance in low-data regimes, highlighting its potential for real-world remote sensing applications.

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