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Learning Point Spread Function Invertibility Assessment for Image Deconvolution

Authors :
Gualdrón-Hurtado, Romario
Jacome, Roman
Urrea, Sergio
Arguello, Henry
Gonzalez, Luis
Publication Year :
2024

Abstract

Deep-learning (DL)-based image deconvolution (ID) has exhibited remarkable recovery performance, surpassing traditional linear methods. However, unlike traditional ID approaches that rely on analytical properties of the point spread function (PSF) to achieve high recovery performance - such as specific spectrum properties or small conditional numbers in the convolution matrix - DL techniques lack quantifiable metrics for evaluating PSF suitability for DL-assisted recovery. Aiming to enhance deconvolution quality, we propose a metric that employs a non-linear approach to learn the invertibility of an arbitrary PSF using a neural network by mapping it to a unit impulse. A lower discrepancy between the mapped PSF and a unit impulse indicates a higher likelihood of successful inversion by a DL network. Our findings reveal that this metric correlates with high recovery performance in DL and traditional methods, thereby serving as an effective regularizer in deconvolution tasks. This approach reduces the computational complexity over conventional condition number assessments and is a differentiable process. These useful properties allow its application in designing diffractive optical elements through end-to-end (E2E) optimization, achieving invertible PSFs, and outperforming the E2E baseline framework.<br />Comment: Accepted at EUSIPCO 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.16343
Document Type :
Working Paper