Multi-Frame Blind Manifold Deconvolution for Rotating Synthetic Aperture Imaging
Journal:
arXiv
Published Date:
Jan 31, 2025
Abstract
Rotating synthetic aperture (RSA) imaging system captures images of the
target scene at different rotation angles by rotating a rectangular aperture.
Deblurring acquired RSA images plays a critical role in reconstructing a latent
sharp image underlying the scene. In the past decade, the emergence of blind
convolution technology has revolutionised this field by its ability to model
complex features from acquired images. Most of the existing methods attempt to
solve the above ill-posed inverse problem through maximising a posterior.
Despite this progress, researchers have paid limited attention to exploring
low-dimensional manifold structures of the latent image within a
high-dimensional ambient-space. Here, we propose a novel method to process RSA
images using manifold fitting and penalisation in the content of multi-frame
blind convolution. We develop fast algorithms for implementing the proposed
procedure. Simulation studies demonstrate that manifold-based deconvolution can
outperform conventional deconvolution algorithms in the sense that it can
generate a sharper estimate of the latent image in terms of estimating pixel
intensities and preserving structural details.