Holistic image understanding with deep learning and dense random fields

One aim of holistic image understanding is not only to recognise the things and stuff in images but also to localise where they are exactly. Semantic image segmentation is set up to achieve this goal. The purpose of this task is to recognise and delineate the visual objects. The solution to this tas...

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Bibliographic Details
Main Author: Zheng, Shuai
Other Authors: Torr, Philip
Published: University of Oxford 2016
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.728976
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7289762018-06-12T03:15:55ZHolistic image understanding with deep learning and dense random fieldsZheng, ShuaiTorr, Philip2016One aim of holistic image understanding is not only to recognise the things and stuff in images but also to localise where they are exactly. Semantic image segmentation is set up to achieve this goal. The purpose of this task is to recognise and delineate the visual objects. The solution to this task provides detailed information to understand images and is central to applications such as content-based image search, autonomous vehicles, image-editing, and smart glasses for partially-sighted people. This task is challenging to address not only because the visual objects from the same category could have a variety of appearances but also because of the need to account for contextual information across images such as edges and appearance consistency. The objective of this thesis is to bridge the gap between the pixel-based image representation in computer devices and the meaning extracted by humans. Our primary contributions are fourfold. Firstly, we propose a factorial fully-connected conditional random field that addresses the problem of jointly estimating the segmentation for both object class and visual attributes. Secondly, we embed the proposed factorial fully-connected conditional random fields framework in an interactive image segmentation system. This system allows users to refine the semantic image segmentation with verbal instructions. Thirdly, we formulate filter-based mean-field approximate inference for fully-connected conditional random fields with Gaussian pairwise potentials as a recurrent neural network. This formulation allows us to integrate fully convolutional neural networks and conditional random fields in an end-to-end trainable system. Fourthly, we show the relationship between fully-connected conditional random fields with Gaussian pairwise potentials and iterative Graph-cut: We found that fully-connected conditional random fields with Gaussian Pairwise potential implicitly model the unnormalised global colour models for foreground and background.University of Oxfordhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.728976https://ora.ox.ac.uk/objects/uuid:1e29bfc5-16ed-44fa-a75c-40d215035feeElectronic Thesis or Dissertation
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sources NDLTD
description One aim of holistic image understanding is not only to recognise the things and stuff in images but also to localise where they are exactly. Semantic image segmentation is set up to achieve this goal. The purpose of this task is to recognise and delineate the visual objects. The solution to this task provides detailed information to understand images and is central to applications such as content-based image search, autonomous vehicles, image-editing, and smart glasses for partially-sighted people. This task is challenging to address not only because the visual objects from the same category could have a variety of appearances but also because of the need to account for contextual information across images such as edges and appearance consistency. The objective of this thesis is to bridge the gap between the pixel-based image representation in computer devices and the meaning extracted by humans. Our primary contributions are fourfold. Firstly, we propose a factorial fully-connected conditional random field that addresses the problem of jointly estimating the segmentation for both object class and visual attributes. Secondly, we embed the proposed factorial fully-connected conditional random fields framework in an interactive image segmentation system. This system allows users to refine the semantic image segmentation with verbal instructions. Thirdly, we formulate filter-based mean-field approximate inference for fully-connected conditional random fields with Gaussian pairwise potentials as a recurrent neural network. This formulation allows us to integrate fully convolutional neural networks and conditional random fields in an end-to-end trainable system. Fourthly, we show the relationship between fully-connected conditional random fields with Gaussian pairwise potentials and iterative Graph-cut: We found that fully-connected conditional random fields with Gaussian Pairwise potential implicitly model the unnormalised global colour models for foreground and background.
author2 Torr, Philip
author_facet Torr, Philip
Zheng, Shuai
author Zheng, Shuai
spellingShingle Zheng, Shuai
Holistic image understanding with deep learning and dense random fields
author_sort Zheng, Shuai
title Holistic image understanding with deep learning and dense random fields
title_short Holistic image understanding with deep learning and dense random fields
title_full Holistic image understanding with deep learning and dense random fields
title_fullStr Holistic image understanding with deep learning and dense random fields
title_full_unstemmed Holistic image understanding with deep learning and dense random fields
title_sort holistic image understanding with deep learning and dense random fields
publisher University of Oxford
publishDate 2016
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.728976
work_keys_str_mv AT zhengshuai holisticimageunderstandingwithdeeplearninganddenserandomfields
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