RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES

Images are becoming more prevalent in our daily lives—especially portraits and facial images. This leads to the increasing prevalence of image-or-video-based surveillance and security, yet in many instances the low capture resolution of the camera or the distance between the camera and the subject c...

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Main Author: Limanta, Felix
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/39138
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:39138
spelling id-itb.:391382019-06-24T10:25:57ZRESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES Limanta, Felix Indonesia Final Project super-resolution, face hallucination, cascaded generation INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39138 Images are becoming more prevalent in our daily lives—especially portraits and facial images. This leads to the increasing prevalence of image-or-video-based surveillance and security, yet in many instances the low capture resolution of the camera or the distance between the camera and the subject causes the facial images to become indecipherably tiny and/or blurry. Super-resolution refers to the process of upscaling an image from a low-resolution one to a high-resolution one while adding details, while face hallucination refers to the specific usage of super-resolution on the domain of human facial images. A common technique to narrow down the solution space for general image super-resolution is cascaded generation. No currently-published face hallucination method uses cascaded generation with a magnification scale larger than 8×. This undergraduate thesis discusses the application of cascaded generation on face hallucination. This undergraduate thesis compares three face hallucination architectures: direct generation, chained generation, and cascaded generation. This is carried out to determine whether cascaded generation on face hallucination is feasible. After the experiment, the model for cascaded-generation face hallucination is trained for two weeks. Due to the lack of training time, the performance of the trained model is inferior to current state-of-the-art methods but is still viable and shall perform better with more training. In addition, using the trained face hallucination model on non-facial images results in a distorted, but still recognizable image. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Images are becoming more prevalent in our daily lives—especially portraits and facial images. This leads to the increasing prevalence of image-or-video-based surveillance and security, yet in many instances the low capture resolution of the camera or the distance between the camera and the subject causes the facial images to become indecipherably tiny and/or blurry. Super-resolution refers to the process of upscaling an image from a low-resolution one to a high-resolution one while adding details, while face hallucination refers to the specific usage of super-resolution on the domain of human facial images. A common technique to narrow down the solution space for general image super-resolution is cascaded generation. No currently-published face hallucination method uses cascaded generation with a magnification scale larger than 8×. This undergraduate thesis discusses the application of cascaded generation on face hallucination. This undergraduate thesis compares three face hallucination architectures: direct generation, chained generation, and cascaded generation. This is carried out to determine whether cascaded generation on face hallucination is feasible. After the experiment, the model for cascaded-generation face hallucination is trained for two weeks. Due to the lack of training time, the performance of the trained model is inferior to current state-of-the-art methods but is still viable and shall perform better with more training. In addition, using the trained face hallucination model on non-facial images results in a distorted, but still recognizable image.
format Final Project
author Limanta, Felix
spellingShingle Limanta, Felix
RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
author_facet Limanta, Felix
author_sort Limanta, Felix
title RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
title_short RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
title_full RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
title_fullStr RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
title_full_unstemmed RESTORATION OF LOW-RESOLUTION IMAGES USING MACHINE LEARNING WITH CASCADED GENERATION AND DOMAIN-INTEGRATED TRAINING ON FACIAL IMAGES
title_sort restoration of low-resolution images using machine learning with cascaded generation and domain-integrated training on facial images
url https://digilib.itb.ac.id/gdl/view/39138
_version_ 1822925208041816064