SARATR-X: Toward Building A Foundation Model for SAR Target Recognition
Weijie Li, Wei Yang, Yuenan Hou, Li Liu, Yongxiang Liu and, Xiang Li

TL;DR
SARATR-X is a pioneering foundation model for SAR target recognition that leverages self-supervised learning on a large unlabelled dataset, enabling scalable, label-efficient detection and classification across diverse categories.
Contribution
This work introduces SARATR-X, the first foundation model for SAR ATR, trained on 0.18 million unlabelled samples using a novel SSL approach tailored for SAR images.
Findings
Achieves competitive or superior performance to supervised methods.
Demonstrates robustness in few-shot and cross-category detection.
Provides a large curated SAR dataset for future research.
Abstract
Despite the remarkable progress in synthetic aperture radar automatic target recognition (SAR ATR), recent efforts have concentrated on detecting and classifying a specific category, e.g., vehicles, ships, airplanes, or buildings. One of the fundamental limitations of the top-performing SAR ATR methods is that the learning paradigm is supervised, task-specific, limited-category, closed-world learning, which depends on massive amounts of accurately annotated samples that are expensively labeled by expert SAR analysts and have limited generalization capability and scalability. In this work, we make the first attempt towards building a foundation model for SAR ATR, termed SARATR-X. SARATR-X learns generalizable representations via self-supervised learning (SSL) and provides a cornerstone for label-efficient model adaptation to generic SAR target detection and classification tasks.…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Synthetic Aperture Radar (SAR) Applications and Techniques
