Blind Image Deconvolution Using Machine Learning for Three-Dimensional Microscopy.Download PDFOpen Website

2010 (modified: 10 Nov 2022)IEEE Trans. Pattern Anal. Mach. Intell.2010Readers: Everyone
Abstract: In this work, we propose a novel method for the regularization of blind deconvolution algorithms. The proposed method employs example-based machine learning techniques for modeling the space of point spread functions. During an iterative blind deconvolution process, a prior term attracts the point spread function estimates to the learned point spread function space. We demonstrate the usage of this regularizer within a Bayesian blind deconvolution framework and also integrate into the latter a method for noise reduction, thus creating a complete blind deconvolution method. The application of the proposed algorithm is demonstrated on synthetic and real-world three-dimensional images acquired by a wide-field fluorescence microscope, where the need for blind deconvolution algorithms is indispensable, yielding excellent results.
0 Replies

Loading