TL;DR
This survey explores the intersection of generative AI and synthetic aperture radar (SAR), reviewing models, applications, and challenges to advance SAR image interpretation and generation.
Contribution
It provides the first comprehensive review of how generative AI techniques are applied to SAR, including models, hybrid approaches, and future directions.
Findings
Comparison of SAR data generation with computer vision tasks
Overview of recent GenAI models and their SAR applications
Discussion of physical and hybrid modeling approaches for SAR
Abstract
SAR images possess unique attributes that present challenges for both human observers and vision AI models to interpret, owing to their electromagnetic characteristics. The interpretation of SAR images encounters various hurdles, with one of the primary obstacles being the data itself, which includes issues related to both the quantity and quality of the data. The challenges can be addressed using generative AI technologies. Generative AI, often known as GenAI, is a very advanced and powerful technology in the field of artificial intelligence that has gained significant attention. The advancement has created possibilities for the creation of texts, photorealistic pictures, videos, and material in various modalities. This paper aims to comprehensively investigate the intersection of GenAI and SAR. First, we illustrate the common data generation-based applications in SAR field and compare…
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