Parametric kernels for structured data analysis

Structured representation of input physical patterns as a set of local features has been useful for a veriety of robotics and human computer interaction (HCI) applications. It enables a stable understanding of the variable inputs. However, this representation does not fit the conventional machine le...

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Main Author: Shin, Young-in
Format: Others
Language:English
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/2152/29669
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spelling ndltd-UTEXAS-oai-repositories.lib.utexas.edu-2152-296692015-09-20T17:31:11ZParametric kernels for structured data analysisShin, Young-inParametric kernelsStructured dataDistance metricsConventional learning algorithmsHandwritten character recognitionOn-line face recognitionObject detectionStructured representation of input physical patterns as a set of local features has been useful for a veriety of robotics and human computer interaction (HCI) applications. It enables a stable understanding of the variable inputs. However, this representation does not fit the conventional machine learning algorithms and distance metrics because they assume vector inputs. To learn from input patterns with variable structure is thus challenging. To address this problem, I propose a general and systematic method to design distance metrics between structured inputs that can be used in conventional learning algorithms. Based on the observation of the stability in the geometric distributions of local features over the physical patterns across similar inputs, this is done combining the local similarities and the conformity of the geometric relationship between local features. The produced distance metrics, called “parametric kernels”, are positive semi-definite and require almost linear time to compute. To demonstrate the general applicability and the efficacy of this approach, I designed and applied parametric kernels to handwritten character recognition, on-line face recognition, and object detection from laser range finder sensor data. Parametric kernels achieve recognition rates competitive to state-of-the-art approaches in these tasks.text2015-05-04T17:36:14Z2015-05-04T17:36:14Z2008-052015-05-04Thesiselectronichttp://hdl.handle.net/2152/29669engCopyright is held by the author. Presentation of this material on the Libraries' web site by University Libraries, The University of Texas at Austin was made possible under a limited license grant from the author who has retained all copyrights in the works.
collection NDLTD
language English
format Others
sources NDLTD
topic Parametric kernels
Structured data
Distance metrics
Conventional learning algorithms
Handwritten character recognition
On-line face recognition
Object detection
spellingShingle Parametric kernels
Structured data
Distance metrics
Conventional learning algorithms
Handwritten character recognition
On-line face recognition
Object detection
Shin, Young-in
Parametric kernels for structured data analysis
description Structured representation of input physical patterns as a set of local features has been useful for a veriety of robotics and human computer interaction (HCI) applications. It enables a stable understanding of the variable inputs. However, this representation does not fit the conventional machine learning algorithms and distance metrics because they assume vector inputs. To learn from input patterns with variable structure is thus challenging. To address this problem, I propose a general and systematic method to design distance metrics between structured inputs that can be used in conventional learning algorithms. Based on the observation of the stability in the geometric distributions of local features over the physical patterns across similar inputs, this is done combining the local similarities and the conformity of the geometric relationship between local features. The produced distance metrics, called “parametric kernels”, are positive semi-definite and require almost linear time to compute. To demonstrate the general applicability and the efficacy of this approach, I designed and applied parametric kernels to handwritten character recognition, on-line face recognition, and object detection from laser range finder sensor data. Parametric kernels achieve recognition rates competitive to state-of-the-art approaches in these tasks. === text
author Shin, Young-in
author_facet Shin, Young-in
author_sort Shin, Young-in
title Parametric kernels for structured data analysis
title_short Parametric kernels for structured data analysis
title_full Parametric kernels for structured data analysis
title_fullStr Parametric kernels for structured data analysis
title_full_unstemmed Parametric kernels for structured data analysis
title_sort parametric kernels for structured data analysis
publishDate 2015
url http://hdl.handle.net/2152/29669
work_keys_str_mv AT shinyoungin parametrickernelsforstructureddataanalysis
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