Automated Semantic Content Extraction from Images
In this study, an automatic semantic segmentation and object recognition methodology is implemented which bridges the semantic gap between low level features of image content and high level conceptual meaning. Semantically understanding an image is essential in modeling autonomous robots, targeting...
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ndltd-LSU-oai-etd.lsu.edu-etd-07052013-1506232013-07-13T03:15:32Z Automated Semantic Content Extraction from Images Arab Khazaeli, Mahdi Engineering Science (Interdepartmental Program) In this study, an automatic semantic segmentation and object recognition methodology is implemented which bridges the semantic gap between low level features of image content and high level conceptual meaning. Semantically understanding an image is essential in modeling autonomous robots, targeting customers in marketing or reverse engineering of building information modeling in the construction industry. To achieve an understanding of a room from a single image we proposed a new object recognition framework which has four major components: segmentation, scene detection, conceptual cueing and object recognition. The new segmentation methodology developed in this research extends Felzenswalb's cost function to include new surface index and depth features as well as color, texture and normal features to overcome issues of occlusion and shadowing commonly found in images. Adding depth allows capturing new features for object recognition stage to achieve high accuracy compared to the current state of the art. The goal was to develop an approach to capture and label perceptually important regions which often reflect global representation and understanding of the image. We developed a system by using contextual and common sense information for improving object recognition and scene detection, and fused the information from scene and objects to reduce the level of uncertainty. This study in addition to improving segmentation, scene detection and object recognition, can be used in applications that require physical parsing of the image into objects, surfaces and their relations. The applications include robotics, social networking, intelligence and anti-terrorism efforts, criminal investigations and security, marketing, and building information modeling in the construction industry. In this dissertation a structural framework (ontology) is developed that generates text descriptions based on understanding of objects, structures and the attributes of an image. Knapp, Gerald Ikuma, Laura Gunturk, Bahadir Waggenspack, Warren Adkins, William LSU 2013-07-12 text application/pdf http://etd.lsu.edu/docs/available/etd-07052013-150623/ http://etd.lsu.edu/docs/available/etd-07052013-150623/ en restricted I hereby certify that, if appropriate, I have obtained and attached herein a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to LSU or its agents the non-exclusive license to archive and make accessible, under the conditions specified below and in appropriate University policies, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report. |
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Engineering Science (Interdepartmental Program) |
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Engineering Science (Interdepartmental Program) Arab Khazaeli, Mahdi Automated Semantic Content Extraction from Images |
description |
In this study, an automatic semantic segmentation and object recognition methodology is implemented which bridges the semantic gap between low level features of image content and high level conceptual meaning. Semantically understanding an image is essential in modeling autonomous robots, targeting customers in marketing or reverse engineering of building information modeling in the construction industry. To achieve an understanding of a room from a single image we proposed a new object recognition framework which has four major components: segmentation, scene detection, conceptual cueing and object recognition.
The new segmentation methodology developed in this research extends Felzenswalb's cost function to include new surface index and depth features as well as color, texture and normal features to overcome issues of occlusion and shadowing commonly found in images. Adding depth allows capturing new features for object recognition stage to achieve high accuracy compared to the current state of the art. The goal was to develop an approach to capture and label perceptually important regions which often reflect global representation and understanding of the image.
We developed a system by using contextual and common sense information for improving object recognition and scene detection, and fused the information from scene and objects to reduce the level of uncertainty. This study in addition to improving segmentation, scene detection and object recognition, can be used in applications that require physical parsing of the image into objects, surfaces and their relations. The applications include robotics, social networking, intelligence and anti-terrorism efforts, criminal investigations and security, marketing, and building information modeling in the construction industry. In this dissertation a structural framework (ontology) is developed that generates text descriptions based on understanding of objects, structures and the attributes of an image. |
author2 |
Knapp, Gerald |
author_facet |
Knapp, Gerald Arab Khazaeli, Mahdi |
author |
Arab Khazaeli, Mahdi |
author_sort |
Arab Khazaeli, Mahdi |
title |
Automated Semantic Content Extraction from Images |
title_short |
Automated Semantic Content Extraction from Images |
title_full |
Automated Semantic Content Extraction from Images |
title_fullStr |
Automated Semantic Content Extraction from Images |
title_full_unstemmed |
Automated Semantic Content Extraction from Images |
title_sort |
automated semantic content extraction from images |
publisher |
LSU |
publishDate |
2013 |
url |
http://etd.lsu.edu/docs/available/etd-07052013-150623/ |
work_keys_str_mv |
AT arabkhazaelimahdi automatedsemanticcontentextractionfromimages |
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