Synthetic image generation and the use of virtual environments for image enhancement tasks

Deep learning networks are often difficult to train if there are insufficient image samples. Gathering real-world images tailored for a specific job takes a lot of work to perform. This dissertation explores techniques for synthetic image generation and virtual environments for various image enhance...

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Main Author: Del Gallego, Neil Patrick
Format: text
Language:English
Published: Animo Repository 2023
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Online Access:https://animorepository.dlsu.edu.ph/etdd_softtech/2
https://animorepository.dlsu.edu.ph/context/etdd_softtech/article/1001/viewcontent/Synthetic_Image_Generation_and_the_Use_of_Virtual_Environments_fo_Redacted.pdf
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etdd_softtech-10012023-10-04T00:27:07Z Synthetic image generation and the use of virtual environments for image enhancement tasks Del Gallego, Neil Patrick Deep learning networks are often difficult to train if there are insufficient image samples. Gathering real-world images tailored for a specific job takes a lot of work to perform. This dissertation explores techniques for synthetic image generation and virtual environments for various image enhancement/ correction/restoration tasks, specifically distortion correction, dehazing, shadow removal, and intrinsic image decomposition. First, given various image formation equations, such as those used in distortion correction and dehazing, synthetic image samples can be produced, provided that the equation is well-posed. Second, using virtual environments to train various image models is applicable for simulating real-world effects that are otherwise difficult to gather or replicate, such as dehazing and shadow removal. Given synthetic images, one cannot train a network directly on it as there is a possible gap between the synthetic and real domains. We have devised several techniques for generating synthetic images and formulated domain adaptation methods where our trained deep-learning networks perform competitively in distortion correction, dehazing, and shadow removal. Additional studies and directions are provided for the intrinsic image decomposition problem and the exploration of procedural content generation, where a virtual Philippine city was created as an initial prototype. Keywords: image generation, image correction, image dehazing, shadow removal, intrinsic image decomposition, computer graphics, rendering, machine learning, neural networks, domain adaptation, procedural content generation. 2023-09-01T07:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/etdd_softtech/2 https://animorepository.dlsu.edu.ph/context/etdd_softtech/article/1001/viewcontent/Synthetic_Image_Generation_and_the_Use_of_Virtual_Environments_fo_Redacted.pdf Software Technology Dissertations English Animo Repository Computer graphics Rendering (Computer graphics) Machine learning Neural networks (Computer science) Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Computer graphics
Rendering (Computer graphics)
Machine learning
Neural networks (Computer science)
Computer Sciences
spellingShingle Computer graphics
Rendering (Computer graphics)
Machine learning
Neural networks (Computer science)
Computer Sciences
Del Gallego, Neil Patrick
Synthetic image generation and the use of virtual environments for image enhancement tasks
description Deep learning networks are often difficult to train if there are insufficient image samples. Gathering real-world images tailored for a specific job takes a lot of work to perform. This dissertation explores techniques for synthetic image generation and virtual environments for various image enhancement/ correction/restoration tasks, specifically distortion correction, dehazing, shadow removal, and intrinsic image decomposition. First, given various image formation equations, such as those used in distortion correction and dehazing, synthetic image samples can be produced, provided that the equation is well-posed. Second, using virtual environments to train various image models is applicable for simulating real-world effects that are otherwise difficult to gather or replicate, such as dehazing and shadow removal. Given synthetic images, one cannot train a network directly on it as there is a possible gap between the synthetic and real domains. We have devised several techniques for generating synthetic images and formulated domain adaptation methods where our trained deep-learning networks perform competitively in distortion correction, dehazing, and shadow removal. Additional studies and directions are provided for the intrinsic image decomposition problem and the exploration of procedural content generation, where a virtual Philippine city was created as an initial prototype. Keywords: image generation, image correction, image dehazing, shadow removal, intrinsic image decomposition, computer graphics, rendering, machine learning, neural networks, domain adaptation, procedural content generation.
format text
author Del Gallego, Neil Patrick
author_facet Del Gallego, Neil Patrick
author_sort Del Gallego, Neil Patrick
title Synthetic image generation and the use of virtual environments for image enhancement tasks
title_short Synthetic image generation and the use of virtual environments for image enhancement tasks
title_full Synthetic image generation and the use of virtual environments for image enhancement tasks
title_fullStr Synthetic image generation and the use of virtual environments for image enhancement tasks
title_full_unstemmed Synthetic image generation and the use of virtual environments for image enhancement tasks
title_sort synthetic image generation and the use of virtual environments for image enhancement tasks
publisher Animo Repository
publishDate 2023
url https://animorepository.dlsu.edu.ph/etdd_softtech/2
https://animorepository.dlsu.edu.ph/context/etdd_softtech/article/1001/viewcontent/Synthetic_Image_Generation_and_the_Use_of_Virtual_Environments_fo_Redacted.pdf
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