OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH
Digital imagery is a two-dimensional visual representation, which often holds emotional significance and crucial information. However, in images, specifically urban imagery, unwanted objects frequently appear. To address this issue, a system capable of automatically selecting areas with unwanted...
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id-itb.:824822024-07-08T14:24:58ZOBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH Aqila Amarendra, Eiffel Indonesia Final Project object removal, urban imagery, image segmentation, image inpainting, deep learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/82482 Digital imagery is a two-dimensional visual representation, which often holds emotional significance and crucial information. However, in images, specifically urban imagery, unwanted objects frequently appear. To address this issue, a system capable of automatically selecting areas with unwanted objects, removing these areas, and reconstructing the removed regions is essential. The object removal system is developed by implementing and integrating an image segmentation module, image inpainting module, and graphical user interface application. The pre-trained image segmentation model, DeepLabv3+, is used for the image segmentation module. On the other hand, there are seven pre-trained image inpainting models, including DeepFillv2, EdgeConnect (Places), EdgeConnect (PSV), MADF (Places), MADF (PSV), MAT, and CoModGAN, which are compared across several testing aspects to be used in the image inpainting module. Based on the analysis of the test results on the test data, the DeepLabv3+ model is proven to perform accurate segmentation with a mIoU value reaching 0.936. The CoModGAN model is chosen as the pre-trained model of the image inpainting module due to its average PSNR score of 26.59dB, SSIM of 0.8908, FID of 39.99, and subjective evaluation of 4.105. The graphical user interface application developed and integrated with the image segmentation and image inpainting modules successfully provides flexibility to users and shows increased performance compared to previous studies. text |
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description |
Digital imagery is a two-dimensional visual representation, which often holds
emotional significance and crucial information. However, in images, specifically
urban imagery, unwanted objects frequently appear. To address this issue, a system
capable of automatically selecting areas with unwanted objects, removing these
areas, and reconstructing the removed regions is essential.
The object removal system is developed by implementing and integrating an image
segmentation module, image inpainting module, and graphical user interface
application. The pre-trained image segmentation model, DeepLabv3+, is used for
the image segmentation module. On the other hand, there are seven pre-trained
image inpainting models, including DeepFillv2, EdgeConnect (Places),
EdgeConnect (PSV), MADF (Places), MADF (PSV), MAT, and CoModGAN,
which are compared across several testing aspects to be used in the image inpainting
module.
Based on the analysis of the test results on the test data, the DeepLabv3+ model is
proven to perform accurate segmentation with a mIoU value reaching 0.936. The
CoModGAN model is chosen as the pre-trained model of the image inpainting
module due to its average PSNR score of 26.59dB, SSIM of 0.8908, FID of 39.99,
and subjective evaluation of 4.105. The graphical user interface application
developed and integrated with the image segmentation and image inpainting
modules successfully provides flexibility to users and shows increased performance
compared to previous studies. |
format |
Final Project |
author |
Aqila Amarendra, Eiffel |
spellingShingle |
Aqila Amarendra, Eiffel OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
author_facet |
Aqila Amarendra, Eiffel |
author_sort |
Aqila Amarendra, Eiffel |
title |
OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
title_short |
OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
title_full |
OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
title_fullStr |
OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
title_full_unstemmed |
OBJECT REMOVAL SYSTEM FOR URBAN IMAGERY USING IMAGE SEGMENTATION AND INPAINTING WITH A DEEP LEARNING APPROACH |
title_sort |
object removal system for urban imagery using image segmentation and inpainting with a deep learning approach |
url |
https://digilib.itb.ac.id/gdl/view/82482 |
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