Remote Sensing (Apr 2024)

Single-Image Super-Resolution Method for Rotating Synthetic Aperture System Using Masking Mechanism

  • Yu Sun,
  • Xiyang Zhi,
  • Shikai Jiang,
  • Tianjun Shi,
  • Jiachun Song,
  • Jiawei Yang,
  • Shengao Wang,
  • Wei Zhang

DOI
https://doi.org/10.3390/rs16091508
Journal volume & issue
Vol. 16, no. 9
p. 1508

Abstract

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The emerging technology of rotating synthetic aperture (RSA) presents a promising solution for the development of lightweight, large-aperture, and high-resolution optical remote sensing systems in geostationary orbit. However, the rectangular shape of the primary mirror and the distinctive imaging mechanism involving the continuous rotation of the mirror lead to a pronounced decline in image resolution along the shorter side of the rectangle compared to the longer side. The resolution also exhibits periodic time-varying characteristics. To address these limitations and enhance image quality, we begin by analyzing the imaging mechanism of the RSA system. Subsequently, we propose a single-image super-resolution method that utilizes a rotated varied-size window attention mechanism instead of full attention, based on the Vision Transformer architecture. We employ a two-stage training methodology for the network, where we pre-train it on images masked with stripe-shaped masks along the shorter side of the rectangular pupil. Following that, we fine-tune the network using unmasked images. Through the strip-wise mask sampling strategy, this two-stage training approach effectively circumvents the interference of lower confidence (clarity) information and outperforms training the network from scratch using the unmasked degraded images. Our digital simulation and semi-physical imaging experiments demonstrate that the proposed method achieves satisfactory performance. This work establishes a valuable reference for future space applications of the RSA system.

Keywords