Lightweight deep learning for image inpainting
This project aims to investigate how the performance of a lightweight image inpainting can be improved while dropping the use of the discriminator and adversarial loss that is very common in most inpainting models. In our project, we made use of a generator model that was adapted from a GAN and h...
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2024
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sg-ntu-dr.10356-1748742024-04-19T15:46:00Z Lightweight deep learning for image inpainting Wong, Nicholas Kar Onn Deepu Rajan School of Computer Science and Engineering ASDRajan@ntu.edu.sg Computer and Information Science This project aims to investigate how the performance of a lightweight image inpainting can be improved while dropping the use of the discriminator and adversarial loss that is very common in most inpainting models. In our project, we made use of a generator model that was adapted from a GAN and has already been proven that it can accomplish image inpainting tasks very successfully. We also implemented different loss functions from different research and even came up with our own loss functions namely convoluted losses. Experiments were carried out to determine how these loss functions interact with one another in hopes of improving the performance on image inpainting. Finally, we also investigated whether a single model that is trained on a dataset with multiple category of images (faces and landscapes) can perform just as well as models that are trained on only one category of dataset. Our research ultimately shows that there is a reason why GANs are still the preferred method in image inpainting task but our loss functions and hybrid datasets showed some promise in possibly driving new ways of approaching an inpainting task Bachelor's degree 2024-04-15T03:25:22Z 2024-04-15T03:25:22Z 2024 Final Year Project (FYP) Wong, N. K. O. (2024). Lightweight deep learning for image inpainting. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/174874 https://hdl.handle.net/10356/174874 en SCSE23-0534 application/pdf Nanyang Technological University |
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Computer and Information Science Wong, Nicholas Kar Onn Lightweight deep learning for image inpainting |
description |
This project aims to investigate how the performance of a lightweight image inpainting
can be improved while dropping the use of the discriminator and adversarial loss that is
very common in most inpainting models. In our project, we made use of a generator
model that was adapted from a GAN and has already been proven that it can accomplish
image inpainting tasks very successfully. We also implemented different loss functions
from different research and even came up with our own loss functions namely convoluted
losses. Experiments were carried out to determine how these loss functions interact with
one another in hopes of improving the performance on image inpainting. Finally, we also
investigated whether a single model that is trained on a dataset with multiple category of
images (faces and landscapes) can perform just as well as models that are trained on only
one category of dataset. Our research ultimately shows that there is a reason why GANs
are still the preferred method in image inpainting task but our loss functions and hybrid
datasets showed some promise in possibly driving new ways of approaching an
inpainting task |
author2 |
Deepu Rajan |
author_facet |
Deepu Rajan Wong, Nicholas Kar Onn |
format |
Final Year Project |
author |
Wong, Nicholas Kar Onn |
author_sort |
Wong, Nicholas Kar Onn |
title |
Lightweight deep learning for image inpainting |
title_short |
Lightweight deep learning for image inpainting |
title_full |
Lightweight deep learning for image inpainting |
title_fullStr |
Lightweight deep learning for image inpainting |
title_full_unstemmed |
Lightweight deep learning for image inpainting |
title_sort |
lightweight deep learning for image inpainting |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/174874 |
_version_ |
1806059857440145408 |