Parametric Curved-Surface Imaging Algorithm for Space Target ISAR Imaging With Rotating Component

Haichen Hu, Junling Wang, Hao Yang, Haiguang Li, Fujie Tang

Research output: Contribution to journalArticlepeer-review

Abstract

Residual range migration hinders high-resolution inverse synthetic aperture radar (ISAR) imaging of space targets when traditional migration through resolution cell (MTRC) correction algorithms are applied, particularly for rotating components that continuously change their attitude relative to the main body. To address this issue, we propose a parametric curved-surface imaging algorithm (PCSIA) for space target ISAR imaging. PCSIA significantly reduces residual range migration by decomposing the two-dimensional interpolation of the curved surface into two nonlinear one-dimensional interpolations, enabling a clearer analysis of the residual migration. Additionally, we introduce a parametric refocusing method specifically designed for imaging the blurry scatterers on the rotating component. This method describes the azimuthal blur of scatterers on the rotating component, which is caused by parameter mismatch. It also aids in identifying scatterers on the main body, as they are well-focused in azimuth after applying PCSIA. Following the application of scatterer CLEAN on the main body, the one-dimensional range profiles of the rotating component are restored through parametric inverse interpolation, enabling secondary refocusing of scatterers on the rotating component. Simulations demonstrate that PCSIA significantly improves MTRC compensation, and ISAR images obtained through the parametric refocusing method aligns well with theoretical expectations.

Original languageEnglish
JournalIEEE Transactions on Aerospace and Electronic Systems
DOIs
Publication statusAccepted/In press - 2025

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