Deconvolution in Fourier integral microscopy

Autor: Tobias Lasser, Genaro Saavedra, Gabriele Scrofani, Anca Stefanoiu, Manuel Martínez-Corral
Rok vydání: 2020
Předmět:
Zdroj: Computational Imaging V.
DOI: 10.1117/12.2558516
Popis: Fourier integral microscopy (FiMic), also referred to as Fourier light field microscopy (FLFM) in the literature, was recently proposed as an alternative to conventional light field microscopy (LFM). FiMic is designed to overcome the non-uniform lateral resolution limitation specific to LFM. By inserting a micro-lens array at the aperture stop of the microscope objective, the Fourier integral microscope directly captures in a single-shot a series of orthographic views of the scene from different viewpoints. We propose an algorithm for the deconvolution of FiMic data by combining the well known Maximum Likelihood Expectation (MLEM) method with total variation (TV) regularization to cope with noise amplification in conventional Richardson-Lucy deconvolution.
Databáze: OpenAIRE