Recognizing complex faces and gaits via novel probabilistic models

In the field of computer vision, developing automated systems to recognize people under unconstrained scenarios is a partially solved problem. In unconstrained sce- narios a number of common variations and complexities such as occlusion, illumi- nation, cluttered background and so on impose vast unc...

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Main Author: Venkatasubramanian, Ibrahim Venkat Krishnamurthy
Other Authors: De Wilde, Philippe
Published: Heriot-Watt University 2010
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.547681
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5476812015-11-03T03:46:38ZRecognizing complex faces and gaits via novel probabilistic modelsVenkatasubramanian, Ibrahim Venkat KrishnamurthyDe Wilde, Philippe2010In the field of computer vision, developing automated systems to recognize people under unconstrained scenarios is a partially solved problem. In unconstrained sce- narios a number of common variations and complexities such as occlusion, illumi- nation, cluttered background and so on impose vast uncertainty to the recognition process. Among the various biometrics that have been emerging recently, this dissertation focus on two of them namely face and gait recognition. Firstly we address the problem of recognizing faces with major occlusions amidst other variations such as pose, scale, expression and illumination using a novel PRObabilistic Component based Interpretation Model (PROCIM) inspired by key psychophysical principles that are closely related to reasoning under uncertainty. The model basically employs Bayesian Networks to establish, learn, interpret and exploit intrinsic similarity mappings from the face domain. Then, by incorporating e cient inference strategies, robust decisions are made for successfully recognizing faces under uncertainty. PROCIM reports improved recognition rates over recent approaches. Secondly we address the newly upcoming gait recognition problem and show that PROCIM can be easily adapted to the gait domain as well. We scienti cally de ne and formulate sub-gaits and propose a novel modular training scheme to e ciently learn subtle sub-gait characteristics from the gait domain. Our results show that the proposed model is robust to several uncertainties and yields sig- ni cant recognition performance. Apart from PROCIM, nally we show how a simple component based gait reasoning can be coherently modeled using the re- cently prominent Markov Logic Networks (MLNs) by intuitively fusing imaging, logic and graphs. We have discovered that face and gait domains exhibit interesting similarity map- pings between object entities and their components. We have proposed intuitive probabilistic methods to model these mappings to perform recognition under vari- ous uncertainty elements. Extensive experimental validations justi es the robust- ness of the proposed methods over the state-of-the-art techniques. iHeriot-Watt Universityhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.547681http://hdl.handle.net/10399/2398Electronic Thesis or Dissertation
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description In the field of computer vision, developing automated systems to recognize people under unconstrained scenarios is a partially solved problem. In unconstrained sce- narios a number of common variations and complexities such as occlusion, illumi- nation, cluttered background and so on impose vast uncertainty to the recognition process. Among the various biometrics that have been emerging recently, this dissertation focus on two of them namely face and gait recognition. Firstly we address the problem of recognizing faces with major occlusions amidst other variations such as pose, scale, expression and illumination using a novel PRObabilistic Component based Interpretation Model (PROCIM) inspired by key psychophysical principles that are closely related to reasoning under uncertainty. The model basically employs Bayesian Networks to establish, learn, interpret and exploit intrinsic similarity mappings from the face domain. Then, by incorporating e cient inference strategies, robust decisions are made for successfully recognizing faces under uncertainty. PROCIM reports improved recognition rates over recent approaches. Secondly we address the newly upcoming gait recognition problem and show that PROCIM can be easily adapted to the gait domain as well. We scienti cally de ne and formulate sub-gaits and propose a novel modular training scheme to e ciently learn subtle sub-gait characteristics from the gait domain. Our results show that the proposed model is robust to several uncertainties and yields sig- ni cant recognition performance. Apart from PROCIM, nally we show how a simple component based gait reasoning can be coherently modeled using the re- cently prominent Markov Logic Networks (MLNs) by intuitively fusing imaging, logic and graphs. We have discovered that face and gait domains exhibit interesting similarity map- pings between object entities and their components. We have proposed intuitive probabilistic methods to model these mappings to perform recognition under vari- ous uncertainty elements. Extensive experimental validations justi es the robust- ness of the proposed methods over the state-of-the-art techniques. i
author2 De Wilde, Philippe
author_facet De Wilde, Philippe
Venkatasubramanian, Ibrahim Venkat Krishnamurthy
author Venkatasubramanian, Ibrahim Venkat Krishnamurthy
spellingShingle Venkatasubramanian, Ibrahim Venkat Krishnamurthy
Recognizing complex faces and gaits via novel probabilistic models
author_sort Venkatasubramanian, Ibrahim Venkat Krishnamurthy
title Recognizing complex faces and gaits via novel probabilistic models
title_short Recognizing complex faces and gaits via novel probabilistic models
title_full Recognizing complex faces and gaits via novel probabilistic models
title_fullStr Recognizing complex faces and gaits via novel probabilistic models
title_full_unstemmed Recognizing complex faces and gaits via novel probabilistic models
title_sort recognizing complex faces and gaits via novel probabilistic models
publisher Heriot-Watt University
publishDate 2010
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.547681
work_keys_str_mv AT venkatasubramanianibrahimvenkatkrishnamurthy recognizingcomplexfacesandgaitsvianovelprobabilisticmodels
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