Graph feature representation network on image compression
This dissertation investigates image compression algorithms integrating deep learning techniques. Due to the popularity of internet technology and smart devices, the need for image signals as the primary medium for information transmission is growing at an alarming rate, so a new compression techniq...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1755272024-05-03T15:45:28Z Graph feature representation network on image compression Xing, Ziyan Anamitra Makur School of Electrical and Electronic Engineering EAMakur@ntu.edu.sg Engineering Image compression Graph representation Deep learning method End-to-end compression Convolutional block attention module This dissertation investigates image compression algorithms integrating deep learning techniques. Due to the popularity of internet technology and smart devices, the need for image signals as the primary medium for information transmission is growing at an alarming rate, so a new compression technique is proposed that aims to increase the compression rate and reduce the transmission cost while ensuring the image quality. The main objective of this dissertation is to explore, analyse and improve the existing image compression techniques and to present the design concept, network structure and working principle of GFRnet based compression network. Experimental design, model training and testing using MS COCO dataset, and results and comparative experimental analysis were conducted. Although this project achieved more satisfactory experimental results in terms of experimental design, feature vector visualisation and its analysis of the effect on the output image, there are also problems of colour distortion and unsatisfactory visual effects. The dissertation also explores the challenges and problems encountered in the research and suggests possible improvement options. Master's degree 2024-04-28T23:51:15Z 2024-04-28T23:51:15Z 2024 Thesis-Master by Coursework Xing, Z. (2024). Graph feature representation network on image compression. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175527 https://hdl.handle.net/10356/175527 en application/pdf Nanyang Technological University |
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Engineering Image compression Graph representation Deep learning method End-to-end compression Convolutional block attention module Xing, Ziyan Graph feature representation network on image compression |
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This dissertation investigates image compression algorithms integrating deep learning techniques. Due to the popularity of internet technology and smart devices, the need for image signals as the primary medium for information transmission is growing at an alarming rate, so a new compression technique is proposed that aims to increase the compression rate and reduce the transmission cost while ensuring the image quality. The main objective of this dissertation is to explore, analyse and improve the existing image compression techniques and to present the design concept, network structure and working principle of GFRnet based compression network. Experimental design, model training and testing using MS COCO dataset, and results and comparative experimental analysis were conducted. Although this project achieved more satisfactory experimental results in terms of experimental design, feature vector visualisation and its analysis of the effect on the output image, there are also problems of colour distortion and unsatisfactory visual effects. The dissertation also explores the challenges and problems encountered in the research and suggests possible improvement options. |
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Anamitra Makur |
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Anamitra Makur Xing, Ziyan |
format |
Thesis-Master by Coursework |
author |
Xing, Ziyan |
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Xing, Ziyan |
title |
Graph feature representation network on image compression |
title_short |
Graph feature representation network on image compression |
title_full |
Graph feature representation network on image compression |
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Graph feature representation network on image compression |
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Graph feature representation network on image compression |
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graph feature representation network on image compression |
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Nanyang Technological University |
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2024 |
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https://hdl.handle.net/10356/175527 |
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1800916138296606720 |