Road Sign Recognition based onInvariant Features using SupportVector Machine
Since last two decades researches have been working on developing systems that can assistsdrivers in the best way possible and make driving safe. Computer vision has played a crucialpart in design of these systems. With the introduction of vision techniques variousautonomous and robust real-time tra...
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ndltd-UPSALLA1-oai-dalea.du.se-27602013-01-08T13:51:49ZRoad Sign Recognition based onInvariant Features using SupportVector MachineengGilani, Syed HassanHögskolan Dalarna, DatateknikBorlänge2007Speed-limit RecognitionShape RecognitionSupport Vector MachinesKernel FunctionsInvariant FeaturesFeature space.Since last two decades researches have been working on developing systems that can assistsdrivers in the best way possible and make driving safe. Computer vision has played a crucialpart in design of these systems. With the introduction of vision techniques variousautonomous and robust real-time traffic automation systems have been designed such asTraffic monitoring, Traffic related parameter estimation and intelligent vehicles. Among theseautomatic detection and recognition of road signs has became an interesting research topic.The system can assist drivers about signs they don’t recognize before passing them.Aim of this research project is to present an Intelligent Road Sign Recognition System basedon state-of-the-art technique, the Support Vector Machine. The project is an extension to thework done at ITS research Platform at Dalarna University [25]. Focus of this research work ison the recognition of road signs under analysis. When classifying an image its location, sizeand orientation in the image plane are its irrelevant features and one way to get rid of thisambiguity is to extract those features which are invariant under the above mentionedtransformation. These invariant features are then used in Support Vector Machine forclassification. Support Vector Machine is a supervised learning machine that solves problemin higher dimension with the help of Kernel functions and is best know for classificationproblems. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:du-2760application/pdfinfo:eu-repo/semantics/openAccess |
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Speed-limit Recognition Shape Recognition Support Vector Machines Kernel Functions Invariant Features Feature space. |
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Speed-limit Recognition Shape Recognition Support Vector Machines Kernel Functions Invariant Features Feature space. Gilani, Syed Hassan Road Sign Recognition based onInvariant Features using SupportVector Machine |
description |
Since last two decades researches have been working on developing systems that can assistsdrivers in the best way possible and make driving safe. Computer vision has played a crucialpart in design of these systems. With the introduction of vision techniques variousautonomous and robust real-time traffic automation systems have been designed such asTraffic monitoring, Traffic related parameter estimation and intelligent vehicles. Among theseautomatic detection and recognition of road signs has became an interesting research topic.The system can assist drivers about signs they don’t recognize before passing them.Aim of this research project is to present an Intelligent Road Sign Recognition System basedon state-of-the-art technique, the Support Vector Machine. The project is an extension to thework done at ITS research Platform at Dalarna University [25]. Focus of this research work ison the recognition of road signs under analysis. When classifying an image its location, sizeand orientation in the image plane are its irrelevant features and one way to get rid of thisambiguity is to extract those features which are invariant under the above mentionedtransformation. These invariant features are then used in Support Vector Machine forclassification. Support Vector Machine is a supervised learning machine that solves problemin higher dimension with the help of Kernel functions and is best know for classificationproblems. |
author |
Gilani, Syed Hassan |
author_facet |
Gilani, Syed Hassan |
author_sort |
Gilani, Syed Hassan |
title |
Road Sign Recognition based onInvariant Features using SupportVector Machine |
title_short |
Road Sign Recognition based onInvariant Features using SupportVector Machine |
title_full |
Road Sign Recognition based onInvariant Features using SupportVector Machine |
title_fullStr |
Road Sign Recognition based onInvariant Features using SupportVector Machine |
title_full_unstemmed |
Road Sign Recognition based onInvariant Features using SupportVector Machine |
title_sort |
road sign recognition based oninvariant features using supportvector machine |
publisher |
Högskolan Dalarna, Datateknik |
publishDate |
2007 |
url |
http://urn.kb.se/resolve?urn=urn:nbn:se:du-2760 |
work_keys_str_mv |
AT gilanisyedhassan roadsignrecognitionbasedoninvariantfeaturesusingsupportvectormachine |
_version_ |
1716531324323364864 |