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In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning

Pattern classification of ingestive behavior in grazing animals has extreme importance in studies related to animal nutrition, growth and health. In this paper, a system to classify chewing patterns of ruminants in in vivo experiments is developed. The proposal is based on data collected by optical...

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Autores principales: Pegorini, Vinicius, Karam, Leandro Zen, Pitta, Christiano Santos Rocha, Cardoso, Rafael, da Silva, Jean Carlos Cardozo, Kalinowski, Hypolito José, Ribeiro, Richardson, Bertotti, Fábio Luiz, Assmann, Tangriani Simioni
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4701289/
https://www.ncbi.nlm.nih.gov/pubmed/26569250
http://dx.doi.org/10.3390/s151128456
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author Pegorini, Vinicius
Karam, Leandro Zen
Pitta, Christiano Santos Rocha
Cardoso, Rafael
da Silva, Jean Carlos Cardozo
Kalinowski, Hypolito José
Ribeiro, Richardson
Bertotti, Fábio Luiz
Assmann, Tangriani Simioni
author_facet Pegorini, Vinicius
Karam, Leandro Zen
Pitta, Christiano Santos Rocha
Cardoso, Rafael
da Silva, Jean Carlos Cardozo
Kalinowski, Hypolito José
Ribeiro, Richardson
Bertotti, Fábio Luiz
Assmann, Tangriani Simioni
author_sort Pegorini, Vinicius
collection PubMed
description Pattern classification of ingestive behavior in grazing animals has extreme importance in studies related to animal nutrition, growth and health. In this paper, a system to classify chewing patterns of ruminants in in vivo experiments is developed. The proposal is based on data collected by optical fiber Bragg grating sensors (FBG) that are processed by machine learning techniques. The FBG sensors measure the biomechanical strain during jaw movements, and a decision tree is responsible for the classification of the associated chewing pattern. In this study, patterns associated with food intake of dietary supplement, hay and ryegrass were considered. Additionally, two other important events for ingestive behavior were monitored: rumination and idleness. Experimental results show that the proposed approach for pattern classification is capable of differentiating the five patterns involved in the chewing process with an overall accuracy of 94%.
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spelling pubmed-47012892016-01-19 In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning Pegorini, Vinicius Karam, Leandro Zen Pitta, Christiano Santos Rocha Cardoso, Rafael da Silva, Jean Carlos Cardozo Kalinowski, Hypolito José Ribeiro, Richardson Bertotti, Fábio Luiz Assmann, Tangriani Simioni Sensors (Basel) Article Pattern classification of ingestive behavior in grazing animals has extreme importance in studies related to animal nutrition, growth and health. In this paper, a system to classify chewing patterns of ruminants in in vivo experiments is developed. The proposal is based on data collected by optical fiber Bragg grating sensors (FBG) that are processed by machine learning techniques. The FBG sensors measure the biomechanical strain during jaw movements, and a decision tree is responsible for the classification of the associated chewing pattern. In this study, patterns associated with food intake of dietary supplement, hay and ryegrass were considered. Additionally, two other important events for ingestive behavior were monitored: rumination and idleness. Experimental results show that the proposed approach for pattern classification is capable of differentiating the five patterns involved in the chewing process with an overall accuracy of 94%. MDPI 2015-11-11 /pmc/articles/PMC4701289/ /pubmed/26569250 http://dx.doi.org/10.3390/s151128456 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Pegorini, Vinicius
Karam, Leandro Zen
Pitta, Christiano Santos Rocha
Cardoso, Rafael
da Silva, Jean Carlos Cardozo
Kalinowski, Hypolito José
Ribeiro, Richardson
Bertotti, Fábio Luiz
Assmann, Tangriani Simioni
In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title_full In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title_fullStr In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title_full_unstemmed In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title_short In Vivo Pattern Classification of Ingestive Behavior in Ruminants Using FBG Sensors and Machine Learning
title_sort in vivo pattern classification of ingestive behavior in ruminants using fbg sensors and machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4701289/
https://www.ncbi.nlm.nih.gov/pubmed/26569250
http://dx.doi.org/10.3390/s151128456
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