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Automated body condition scoring of dairy cows using 3-dimensional feature extraction from multiple body regions.
Song, X; Bokkers, E A M; van Mourik, S; Groot Koerkamp, P W G; van der Tol, P P J.
Afiliação
  • Song X; Farm Technology Group, Wageningen University & Research, PO Box 16, Wageningen, 6700 AA, the Netherlands; Sensors and Data Analysis Department, Lely Innovation, Cornelis van der Lelylaan 1, Maassluis, 3147 PB, the Netherlands. Electronic address: xsong@lely.com.
  • Bokkers EAM; Animal Production Systems Group, Wageningen University & Research, PO Box 338, Wageningen, 6700 AH, the Netherlands.
  • van Mourik S; Farm Technology Group, Wageningen University & Research, PO Box 16, Wageningen, 6700 AA, the Netherlands.
  • Groot Koerkamp PWG; Farm Technology Group, Wageningen University & Research, PO Box 16, Wageningen, 6700 AA, the Netherlands.
  • van der Tol PPJ; Farm Technology Group, Wageningen University & Research, PO Box 16, Wageningen, 6700 AA, the Netherlands; Sensors and Data Analysis Department, Lely Innovation, Cornelis van der Lelylaan 1, Maassluis, 3147 PB, the Netherlands.
J Dairy Sci ; 102(5): 4294-4308, 2019 May.
Article em En | MEDLINE | ID: mdl-30879819
ABSTRACT
Machine vision technology has been used in automated body condition score (BCS) classification of dairy cows. The current vision-based classifications use information acquired from a limited number of body regions of the cow. Our study aimed to improve automated BCS classification by including multiple body condition-related features extracted from 3 viewpoints in 8 body regions. The data set of this study included 44 lactating cows with their BCS evenly distributed over the scale of BCS from 1.5 to 4.5 units. The body images of these cows were recorded over 2 consecutive days using 3-dimensional cameras positioned to view the cow from the top, right side, and rear. Each image was automatically processed to identify anatomical landmarks on the body surface. Around these anatomical landmarks, the bony prominences and body surface depressions were quantified to describe 8 body condition-related features. A manual BCS of each cow was independently assigned by 2 trained assessors using the same predefined protocol. With the extracted features as inputs and manual BCS as the reference, we built a nearest-neighbor classification model to classify BCS and obtained an overall classification sensitivity of 0.72 using a 10-fold cross-validation. We conclude that the sensitivity of automated BCS classification has been improved by expanding the selection of body condition-related features extracted from multiple body regions.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Bovinos / Fotografação / Indicadores Básicos de Saúde Idioma: En Ano de publicação: 2019 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Bovinos / Fotografação / Indicadores Básicos de Saúde Idioma: En Ano de publicação: 2019 Tipo de documento: Article