A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language

Autores
Quiroga, Facundo; Antonio, Ramiro; Ronchetti, Franco; Lanzarini, Laura Cristina; Rosete, Alejandro
Año de publicación
2017
Idioma
inglés
Tipo de recurso
documento de conferencia
Estado
versión publicada
Descripción
Convolutional Neural Networks have been providing a performance boost in many areas in the last few years, but their performance for Handshape Recognition in the context of Sign Language Recognition has not been thoroughly studied. We evaluated several convolutional architectures in order to determine their applicability for this problem. Using the LSA16 and RWTH-PHOENIX-Weather handshape datasets, we performed experiments with the LeNet, VGG16, ResNet-34 and All Convolutional architectures, as well as Inception with normal training and via transfer learning, and compared them to the state of the art in these datasets. We included experiments with a feedforward neural network as a baseline. We also explored various preprocessing schemes to analyze their impact on the recognition. We determined that while all models perform reasonably well on both datasets (with performance similar to hand-engineered methods), VGG16 produced the best results, closely followed by the traditional LeNet architecture. Also, pre-segmenting the hands from the background provided a big boost to accuracy.
Materia
Ciencias de la Computación
convolutional neural networks
sign language recognition
handshape recognition
Nivel de accesibilidad
acceso abierto
Condiciones de uso
http://creativecommons.org/licenses/by-nc-sa/4.0/
Repositorio
CIC Digital (CICBA)
Institución
Comisión de Investigaciones Científicas de la Provincia de Buenos Aires
OAI Identificador
oai:digital.cic.gba.gob.ar:11746/8630

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network_name_str CIC Digital (CICBA)
spelling A Study of Convolutional Architectures for Handshape Recognition applied to Sign LanguageQuiroga, FacundoAntonio, RamiroRonchetti, FrancoLanzarini, Laura CristinaRosete, AlejandroCiencias de la Computaciónconvolutional neural networkssign language recognitionhandshape recognitionConvolutional Neural Networks have been providing a performance boost in many areas in the last few years, but their performance for Handshape Recognition in the context of Sign Language Recognition has not been thoroughly studied. We evaluated several convolutional architectures in order to determine their applicability for this problem. Using the LSA16 and RWTH-PHOENIX-Weather handshape datasets, we performed experiments with the LeNet, VGG16, ResNet-34 and All Convolutional architectures, as well as Inception with normal training and via transfer learning, and compared them to the state of the art in these datasets. We included experiments with a feedforward neural network as a baseline. We also explored various preprocessing schemes to analyze their impact on the recognition. We determined that while all models perform reasonably well on both datasets (with performance similar to hand-engineered methods), VGG16 produced the best results, closely followed by the traditional LeNet architecture. Also, pre-segmenting the hands from the background provided a big boost to accuracy.2017-10info:eu-repo/semantics/conferenceObjectinfo:eu-repo/semantics/publishedVersionhttp://purl.org/coar/resource_type/c_5794info:ar-repo/semantics/documentoDeConferenciaapplication/pdfhttps://digital.cic.gba.gob.ar/handle/11746/8630enginfo:eu-repo/semantics/altIdentifier/hdl/10915/63481info:eu-repo/semantics/openAccesshttp://creativecommons.org/licenses/by-nc-sa/4.0/reponame:CIC Digital (CICBA)instname:Comisión de Investigaciones Científicas de la Provincia de Buenos Airesinstacron:CICBA2025-09-29T13:39:52Zoai:digital.cic.gba.gob.ar:11746/8630Institucionalhttp://digital.cic.gba.gob.arOrganismo científico-tecnológicoNo correspondehttp://digital.cic.gba.gob.ar/oai/snrdmarisa.degiusti@sedici.unlp.edu.arArgentinaNo correspondeNo correspondeNo correspondeopendoar:94412025-09-29 13:39:52.295CIC Digital (CICBA) - Comisión de Investigaciones Científicas de la Provincia de Buenos Airesfalse
dc.title.none.fl_str_mv A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
title A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
spellingShingle A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
Quiroga, Facundo
Ciencias de la Computación
convolutional neural networks
sign language recognition
handshape recognition
title_short A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
title_full A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
title_fullStr A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
title_full_unstemmed A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
title_sort A Study of Convolutional Architectures for Handshape Recognition applied to Sign Language
dc.creator.none.fl_str_mv Quiroga, Facundo
Antonio, Ramiro
Ronchetti, Franco
Lanzarini, Laura Cristina
Rosete, Alejandro
author Quiroga, Facundo
author_facet Quiroga, Facundo
Antonio, Ramiro
Ronchetti, Franco
Lanzarini, Laura Cristina
Rosete, Alejandro
author_role author
author2 Antonio, Ramiro
Ronchetti, Franco
Lanzarini, Laura Cristina
Rosete, Alejandro
author2_role author
author
author
author
dc.subject.none.fl_str_mv Ciencias de la Computación
convolutional neural networks
sign language recognition
handshape recognition
topic Ciencias de la Computación
convolutional neural networks
sign language recognition
handshape recognition
dc.description.none.fl_txt_mv Convolutional Neural Networks have been providing a performance boost in many areas in the last few years, but their performance for Handshape Recognition in the context of Sign Language Recognition has not been thoroughly studied. We evaluated several convolutional architectures in order to determine their applicability for this problem. Using the LSA16 and RWTH-PHOENIX-Weather handshape datasets, we performed experiments with the LeNet, VGG16, ResNet-34 and All Convolutional architectures, as well as Inception with normal training and via transfer learning, and compared them to the state of the art in these datasets. We included experiments with a feedforward neural network as a baseline. We also explored various preprocessing schemes to analyze their impact on the recognition. We determined that while all models perform reasonably well on both datasets (with performance similar to hand-engineered methods), VGG16 produced the best results, closely followed by the traditional LeNet architecture. Also, pre-segmenting the hands from the background provided a big boost to accuracy.
description Convolutional Neural Networks have been providing a performance boost in many areas in the last few years, but their performance for Handshape Recognition in the context of Sign Language Recognition has not been thoroughly studied. We evaluated several convolutional architectures in order to determine their applicability for this problem. Using the LSA16 and RWTH-PHOENIX-Weather handshape datasets, we performed experiments with the LeNet, VGG16, ResNet-34 and All Convolutional architectures, as well as Inception with normal training and via transfer learning, and compared them to the state of the art in these datasets. We included experiments with a feedforward neural network as a baseline. We also explored various preprocessing schemes to analyze their impact on the recognition. We determined that while all models perform reasonably well on both datasets (with performance similar to hand-engineered methods), VGG16 produced the best results, closely followed by the traditional LeNet architecture. Also, pre-segmenting the hands from the background provided a big boost to accuracy.
publishDate 2017
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dc.language.none.fl_str_mv eng
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