VistaMilk SFI Research Centre, Dublin, Ireland.
Insight Centre for Data Analytics, Dublin City University, Dublin 9, Ireland.
J Anim Sci. 2021 Dec 1;99(12). doi: 10.1093/jas/skab319.
The identification of different meat cuts for labeling and quality control on production lines is still largely a manual process. As a result, it is a labor-intensive exercise with the potential for not only error but also bacterial cross-contamination. Artificial intelligence is used in many disciplines to identify objects within images, but these approaches usually require a considerable volume of images for training and validation. The objective of this study was to identify five different meat cuts from images and weights collected by a trained operator within the working environment of a commercial Irish beef plant. Individual cut images and weights from 7,987 meats cuts extracted from semimembranosus muscles (i.e., Topside muscle), post editing, were available. A variety of classical neural networks and a novel Ensemble machine learning approaches were then tasked with identifying each individual meat cut; performance of the approaches was dictated by accuracy (the percentage of correct predictions), precision (the ratio of correctly predicted objects relative to the number of objects identified as positive), and recall (also known as true positive rate or sensitivity). A novel Ensemble approach outperformed a selection of the classical neural networks including convolutional neural network and residual network. The accuracy, precision, and recall for the novel Ensemble method were 99.13%, 99.00%, and 98.00%, respectively, while that of the next best method were 98.00%, 98.00%, and 95.00%, respectively. The Ensemble approach, which requires relatively few gold-standard measures, can readily be deployed under normal abattoir conditions; the strategy could also be evaluated in the cuts from other primals or indeed other species.
不同的肉块用于标签和生产线质量控制的识别在很大程度上仍然是一个手动过程。因此,这是一项劳动密集型的工作,不仅存在错误的风险,还存在细菌交叉污染的风险。人工智能被用于许多学科来识别图像中的物体,但这些方法通常需要相当数量的图像进行训练和验证。本研究的目的是在商业爱尔兰牛肉厂的工作环境中,通过受过训练的操作员从图像和重量中识别出五种不同的肉块。从半膜肌(即臀肉)中提取的 7987 个肉块的单个切割图像和重量经过后期编辑后可用。然后,各种经典神经网络和一种新颖的集成机器学习方法被用于识别每个单独的肉块;方法的性能由准确性(正确预测的百分比)、精度(相对于被识别为阳性的物体数量的正确预测物体的比例)和召回率(也称为真阳性率或敏感性)来决定。一种新颖的集成方法的性能优于包括卷积神经网络和残差网络在内的几种经典神经网络。新颖集成方法的准确性、精度和召回率分别为 99.13%、99.00%和 98.00%,而次佳方法的分别为 98.00%、98.00%和 95.00%。该集成方法需要相对较少的金标准措施,因此可以在正常屠宰条件下迅速部署;该策略还可以在其他原始肉或其他物种的切割中进行评估。