Prediction of Girolando cattle weight by means of body measurements extracted from images

Detalhes bibliográficos
Autor(a) principal: Weber,Vanessa Aparecida de Moraes
Data de Publicação: 2020
Outros Autores: Weber,Fabricio de Lima, Gomes,Rodrigo da Costa, Oliveira Junior,Adair da Silva, Menezes,Geazy Vilharva, Abreu,Urbano Gomes Pinto de, Belete,Nícolas Alessandro de Souza, Pistori,Hemerson
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Revista Brasileira de Zootecnia (Online)
Texto Completo: http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1516-35982020000100800
Resumo: Abstract The objective with this study was to analyze the body measurements of Girolando cattle, as well as measurements extracted from their images, to generate a model to understand which measures further explain the cattle body weight. Therefore, the experiment physically measured 34 Girolando cattle (two males and 32 females), for the following traits: heart girth (HGP), circumference of the abdomen, body length, occipito-ischial length, wither height, and hip height. In addition, images of the dorsum and the body lateral area of these animals allowed measurements of hip width (HWI), body length, tail distance to the neck, dorsum area (DAI), dorsum perimeter, wither height, hip height, body lateral area, perimeter of the lateral area, and rib height. The measurements extracted from the images were subjected to the stepwise regression method and regression-based machine learning algorithms. The HGp was the physical measure with stronger positive correlation with respect to body weight. In the stepwise method, the final model generated R² of 0.70 and RMSE of 42.52 kg and the equation: WEIGHT ( kg ) = 6.15421 * HW I ( cm ) + 0.01929 * DA I ( cm 2 ) + 70.8388. The linear regression and SVM algorithms obtained the best results, followed by discretization regression with random forests. The set of rules presented in this study can be recommended for estimating body weight in Girolando cattle, at a correlation coefficient of 0.71, by measurements of hip width and dorsum area, both extracted from cattle images.
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spelling Prediction of Girolando cattle weight by means of body measurements extracted from imagescattlecomputer visionlivestock precisionmachine learningmass estimationAbstract The objective with this study was to analyze the body measurements of Girolando cattle, as well as measurements extracted from their images, to generate a model to understand which measures further explain the cattle body weight. Therefore, the experiment physically measured 34 Girolando cattle (two males and 32 females), for the following traits: heart girth (HGP), circumference of the abdomen, body length, occipito-ischial length, wither height, and hip height. In addition, images of the dorsum and the body lateral area of these animals allowed measurements of hip width (HWI), body length, tail distance to the neck, dorsum area (DAI), dorsum perimeter, wither height, hip height, body lateral area, perimeter of the lateral area, and rib height. The measurements extracted from the images were subjected to the stepwise regression method and regression-based machine learning algorithms. The HGp was the physical measure with stronger positive correlation with respect to body weight. In the stepwise method, the final model generated R² of 0.70 and RMSE of 42.52 kg and the equation: WEIGHT ( kg ) = 6.15421 * HW I ( cm ) + 0.01929 * DA I ( cm 2 ) + 70.8388. The linear regression and SVM algorithms obtained the best results, followed by discretization regression with random forests. The set of rules presented in this study can be recommended for estimating body weight in Girolando cattle, at a correlation coefficient of 0.71, by measurements of hip width and dorsum area, both extracted from cattle images.Sociedade Brasileira de Zootecnia2020-01-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersiontext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S1516-35982020000100800Revista Brasileira de Zootecnia v.49 2020reponame:Revista Brasileira de Zootecnia (Online)instname:Sociedade Brasileira de Zootecnia (SBZ)instacron:SBZ10.37496/rbz4920190110info:eu-repo/semantics/openAccessWeber,Vanessa Aparecida de MoraesWeber,Fabricio de LimaGomes,Rodrigo da CostaOliveira Junior,Adair da SilvaMenezes,Geazy VilharvaAbreu,Urbano Gomes Pinto deBelete,Nícolas Alessandro de SouzaPistori,Hemersoneng2020-03-19T00:00:00Zoai:scielo:S1516-35982020000100800Revistahttps://www.rbz.org.br/pt-br/https://old.scielo.br/oai/scielo-oai.php||bz@sbz.org.br|| secretariarbz@sbz.org.br1806-92901516-3598opendoar:2020-03-19T00:00Revista Brasileira de Zootecnia (Online) - Sociedade Brasileira de Zootecnia (SBZ)false
dc.title.none.fl_str_mv Prediction of Girolando cattle weight by means of body measurements extracted from images
title Prediction of Girolando cattle weight by means of body measurements extracted from images
spellingShingle Prediction of Girolando cattle weight by means of body measurements extracted from images
Weber,Vanessa Aparecida de Moraes
cattle
computer vision
livestock precision
machine learning
mass estimation
title_short Prediction of Girolando cattle weight by means of body measurements extracted from images
title_full Prediction of Girolando cattle weight by means of body measurements extracted from images
title_fullStr Prediction of Girolando cattle weight by means of body measurements extracted from images
title_full_unstemmed Prediction of Girolando cattle weight by means of body measurements extracted from images
title_sort Prediction of Girolando cattle weight by means of body measurements extracted from images
author Weber,Vanessa Aparecida de Moraes
author_facet Weber,Vanessa Aparecida de Moraes
Weber,Fabricio de Lima
Gomes,Rodrigo da Costa
Oliveira Junior,Adair da Silva
Menezes,Geazy Vilharva
Abreu,Urbano Gomes Pinto de
Belete,Nícolas Alessandro de Souza
Pistori,Hemerson
author_role author
author2 Weber,Fabricio de Lima
Gomes,Rodrigo da Costa
Oliveira Junior,Adair da Silva
Menezes,Geazy Vilharva
Abreu,Urbano Gomes Pinto de
Belete,Nícolas Alessandro de Souza
Pistori,Hemerson
author2_role author
author
author
author
author
author
author
dc.contributor.author.fl_str_mv Weber,Vanessa Aparecida de Moraes
Weber,Fabricio de Lima
Gomes,Rodrigo da Costa
Oliveira Junior,Adair da Silva
Menezes,Geazy Vilharva
Abreu,Urbano Gomes Pinto de
Belete,Nícolas Alessandro de Souza
Pistori,Hemerson
dc.subject.por.fl_str_mv cattle
computer vision
livestock precision
machine learning
mass estimation
topic cattle
computer vision
livestock precision
machine learning
mass estimation
description Abstract The objective with this study was to analyze the body measurements of Girolando cattle, as well as measurements extracted from their images, to generate a model to understand which measures further explain the cattle body weight. Therefore, the experiment physically measured 34 Girolando cattle (two males and 32 females), for the following traits: heart girth (HGP), circumference of the abdomen, body length, occipito-ischial length, wither height, and hip height. In addition, images of the dorsum and the body lateral area of these animals allowed measurements of hip width (HWI), body length, tail distance to the neck, dorsum area (DAI), dorsum perimeter, wither height, hip height, body lateral area, perimeter of the lateral area, and rib height. The measurements extracted from the images were subjected to the stepwise regression method and regression-based machine learning algorithms. The HGp was the physical measure with stronger positive correlation with respect to body weight. In the stepwise method, the final model generated R² of 0.70 and RMSE of 42.52 kg and the equation: WEIGHT ( kg ) = 6.15421 * HW I ( cm ) + 0.01929 * DA I ( cm 2 ) + 70.8388. The linear regression and SVM algorithms obtained the best results, followed by discretization regression with random forests. The set of rules presented in this study can be recommended for estimating body weight in Girolando cattle, at a correlation coefficient of 0.71, by measurements of hip width and dorsum area, both extracted from cattle images.
publishDate 2020
dc.date.none.fl_str_mv 2020-01-01
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
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dc.language.iso.fl_str_mv eng
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dc.relation.none.fl_str_mv 10.37496/rbz4920190110
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dc.publisher.none.fl_str_mv Sociedade Brasileira de Zootecnia
publisher.none.fl_str_mv Sociedade Brasileira de Zootecnia
dc.source.none.fl_str_mv Revista Brasileira de Zootecnia v.49 2020
reponame:Revista Brasileira de Zootecnia (Online)
instname:Sociedade Brasileira de Zootecnia (SBZ)
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