Irish Cattle Breeding Federation, Bandon, Co. Cork, Ireland; Munster Technological University, Bishopstown, Cork, Ireland.
Irish Cattle Breeding Federation, Bandon, Co. Cork, Ireland.
Meat Sci. 2022 Feb;184:108671. doi: 10.1016/j.meatsci.2021.108671. Epub 2021 Sep 10.
Deep Learning (DL) has proven to be a successful tool for many image classification problems but has yet to be applied to carcass images. The aim of this study was to train DL models to predict carcass cut yields and compare predictions to more standard machine learning (ML) methods. Three approaches were undertaken to predict the grouped carcass cut yields of Grilling cuts and Roasting cuts from a large dataset of 54,598 and 69,246 animals respectively. The approaches taken were (1) animal phenotypic data used as features for a range of ML algorithms, (2) carcass images used to train Convolutional Neural Networks, and (3) carcass dimensions measured directly from the carcass images, combined with the associated phenotypic data and used as feature data for ML algorithms. Results showed that DL models can be trained to predict carcass cuts yields but an approach that uses carcass dimensions in ML algorithms performs slightly better in absolute terms.
深度学习(DL)已被证明是许多图像分类问题的成功工具,但尚未应用于胴体图像。本研究的目的是训练 DL 模型来预测胴体切割产量,并将预测结果与更标准的机器学习(ML)方法进行比较。本研究分别采用三种方法来预测 54598 头和 69246 头大样本的Grilling cuts 和 Roasting cuts 组胴体切割产量。所采用的方法包括:(1)将动物表型数据用作一系列 ML 算法的特征;(2)使用胴体图像训练卷积神经网络;(3)直接从胴体图像测量胴体尺寸,结合相关表型数据,并将其用作 ML 算法的特征数据。结果表明,DL 模型可以训练来预测胴体切割产量,但在 ML 算法中使用胴体尺寸的方法在绝对值上表现略好。