Radon Implicit Field Transform (RIFT): Learning Scenes from Radar Signals
Daqian Bao, Alex Saad-Falcon, Justin Romberg

TL;DR
This paper introduces RIFT, a novel neural scene representation method for radar signals that significantly reduces data requirements and improves scene reconstruction accuracy using implicit neural representations and a classical radar model.
Contribution
The paper presents RIFT, combining a classical radar forward model with neural implicit representations, enabling efficient scene learning from limited radar data and extending to other ASP modalities.
Findings
Achieves up to 188% improvement in scene reconstruction with only 10% data.
Introduces new error metrics: p-RMSE and m-SSIM for radar data.
Demonstrates effective scene interpolation and reconstruction from synthetic radar data.
Abstract
Data acquisition in array signal processing (ASP) is costly because achieving high angular and range resolutions necessitates large antenna apertures and wide frequency bandwidths, respectively. The data requirements for ASP problems grow multiplicatively with the number of viewpoints and frequencies, significantly increasing the burden of data collection, even for simulation. Implicit Neural Representations (INRs) -- neural network-based models of 3D objects and scenes -- offer compact and continuous representations with minimal radar data. They can interpolate to unseen viewpoints and potentially address the sampling cost in ASP problems. In this work, we select Synthetic Aperture Radar (SAR) as a case from ASP and propose Radon Implicit Field Transform (RIFT). RIFT consists of two components: a classical forward model for radar (Generalized Radon Transform, GRT), and an INR based…
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Taxonomy
TopicsGeophysical Methods and Applications
