Computational imaging through deep learning

This electronic version was submitted by the student author. The certified thesis is available in the Institute Archives and Special Collections. === Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019 === Cataloged from student-submitted PDF version of...

Full description

Bibliographic Details
Main Author: Li, Shuai,Ph.D.Massachusetts Institute of Technology.
Other Authors: George Barbastathis.
Format: Others
Language:English
Published: Massachusetts Institute of Technology 2019
Subjects:
Online Access:https://hdl.handle.net/1721.1/122070
id ndltd-MIT-oai-dspace.mit.edu-1721.1-122070
record_format oai_dc
spelling ndltd-MIT-oai-dspace.mit.edu-1721.1-1220702019-11-24T04:06:30Z Computational imaging through deep learning Li, Shuai,Ph.D.Massachusetts Institute of Technology. George Barbastathis. Massachusetts Institute of Technology. Department of Mechanical Engineering. Massachusetts Institute of Technology. Department of Mechanical Engineering Mechanical Engineering. This electronic version was submitted by the student author. The certified thesis is available in the Institute Archives and Special Collections. Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019 Cataloged from student-submitted PDF version of thesis. Includes bibliographical references (pages 143-154). Computational imaging (CI) is a class of imaging systems that uses inverse algorithms to recover an unknown object from the physical measurement. Traditional inverse algorithms in CI obtain an estimate of the object by minimizing the Tikhonov functional, which requires explicit formulations of the forward operator of the physical system, as well as the prior knowledge about the class of objects being imaged. In recent years, machine learning architectures, and deep learning (DL) in particular, have attracted increasing attentions from CI researchers. Unlike traditional inverse algorithms in CI, DL approach learns both the forward operator and the objects' prior implicitly from training examples. Therefore, it is especially attractive when the forward imaging model is uncertain (e.g. imaging through random scattering media), or the prior about the class of objects is difficult to be expressed analytically (e.g. natural images). In this thesis, the application of DL approaches in two different CI scenarios are investigated: imaging through a glass diffuser and quantitative phase retrieval (QPR), where an Imaging through Diffuser Network (IDiffNet) and a Phase Extraction Neural Network (PhENN) are experimentally demonstrated, respectively. This thesis also studies the influences of the two main factors that determine the performance of a trained neural network: network architecture (connectivity, network depth, etc) and training example quality (spatial frequency content in particular). Motivated by the analysis of the latter factor, two novel approaches, spectral pre-modulation approach and Learning Synthesis by DNN (LS-DNN) method, are successively proposed to improve the visual qualities of the network outputs. Finally, the LS-DNN enhanced PhENN is applied to a phase microscope to recover the phase of a red blood cell (RBC) sample. Furthermore, through simulation of the learned weak object transfer function (WOTF) and experiment on a star-like phase target, we demonstrate that our network has indeed learned the correct physical model rather than doing something trivial as pattern matching. by Shuai Li. Ph. D. Ph.D. Massachusetts Institute of Technology, Department of Mechanical Engineering 2019-09-16T16:40:21Z 2019-09-16T16:40:21Z 2019 2019 Thesis https://hdl.handle.net/1721.1/122070 1117711022 eng MIT theses are protected by copyright. They may be viewed, downloaded, or printed from this source but further reproduction or distribution in any format is prohibited without written permission. http://dspace.mit.edu/handle/1721.1/7582 154 pages application/pdf Massachusetts Institute of Technology
collection NDLTD
language English
format Others
sources NDLTD
topic Mechanical Engineering.
spellingShingle Mechanical Engineering.
Li, Shuai,Ph.D.Massachusetts Institute of Technology.
Computational imaging through deep learning
description This electronic version was submitted by the student author. The certified thesis is available in the Institute Archives and Special Collections. === Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019 === Cataloged from student-submitted PDF version of thesis. === Includes bibliographical references (pages 143-154). === Computational imaging (CI) is a class of imaging systems that uses inverse algorithms to recover an unknown object from the physical measurement. Traditional inverse algorithms in CI obtain an estimate of the object by minimizing the Tikhonov functional, which requires explicit formulations of the forward operator of the physical system, as well as the prior knowledge about the class of objects being imaged. In recent years, machine learning architectures, and deep learning (DL) in particular, have attracted increasing attentions from CI researchers. Unlike traditional inverse algorithms in CI, DL approach learns both the forward operator and the objects' prior implicitly from training examples. Therefore, it is especially attractive when the forward imaging model is uncertain (e.g. imaging through random scattering media), or the prior about the class of objects is difficult to be expressed analytically (e.g. natural images). === In this thesis, the application of DL approaches in two different CI scenarios are investigated: imaging through a glass diffuser and quantitative phase retrieval (QPR), where an Imaging through Diffuser Network (IDiffNet) and a Phase Extraction Neural Network (PhENN) are experimentally demonstrated, respectively. This thesis also studies the influences of the two main factors that determine the performance of a trained neural network: network architecture (connectivity, network depth, etc) and training example quality (spatial frequency content in particular). Motivated by the analysis of the latter factor, two novel approaches, spectral pre-modulation approach and Learning Synthesis by DNN (LS-DNN) method, are successively proposed to improve the visual qualities of the network outputs. Finally, the LS-DNN enhanced PhENN is applied to a phase microscope to recover the phase of a red blood cell (RBC) sample. === Furthermore, through simulation of the learned weak object transfer function (WOTF) and experiment on a star-like phase target, we demonstrate that our network has indeed learned the correct physical model rather than doing something trivial as pattern matching. === by Shuai Li. === Ph. D. === Ph.D. Massachusetts Institute of Technology, Department of Mechanical Engineering
author2 George Barbastathis.
author_facet George Barbastathis.
Li, Shuai,Ph.D.Massachusetts Institute of Technology.
author Li, Shuai,Ph.D.Massachusetts Institute of Technology.
author_sort Li, Shuai,Ph.D.Massachusetts Institute of Technology.
title Computational imaging through deep learning
title_short Computational imaging through deep learning
title_full Computational imaging through deep learning
title_fullStr Computational imaging through deep learning
title_full_unstemmed Computational imaging through deep learning
title_sort computational imaging through deep learning
publisher Massachusetts Institute of Technology
publishDate 2019
url https://hdl.handle.net/1721.1/122070
work_keys_str_mv AT lishuaiphdmassachusettsinstituteoftechnology computationalimagingthroughdeeplearning
_version_ 1719295299477831680