Department of Animal Science, North Dakota State University, Fargo, ND, USA.
Meat Sci. 2012 Dec;92(4):386-93. doi: 10.1016/j.meatsci.2012.04.030. Epub 2012 May 8.
The objective of this study was to investigate the usefulness of raw meat surface characteristics (texture) in predicting cooked beef tenderness. Color and multispectral texture features, including 4 different wavelengths and 217 image texture features, were extracted from 2 laboratory-based multispectral camera imaging systems. Steaks were segregated into tough and tender classification groups based on Warner-Bratzler shear force. The texture features were submitted to STEPWISE multiple regression and support vector machine (SVM) analyses to establish prediction models for beef tenderness. A subsample (80%) of tender or tough classified steaks were used to train models which were then validated on the remaining (20%) test steaks. For color images, the SVM model correctly identified tender steaks with 100% accurately while the STEPWISE equation identified 94.9% of the tender steaks correctly. For multispectral images, the SVM model predicted 91% and STEPWISE predicted 87% average accuracy of beef tender.
本研究旨在探究生肉表面特性(质地)在预测牛肉嫩度方面的有用性。采用 2 种基于实验室的多光谱相机成像系统,从颜色和多光谱纹理特征中提取了 4 种不同波长和 217 种图像纹理特征。根据 Warner-Bratzler 剪切力将牛排分为坚韧和嫩度分类组。将纹理特征提交给逐步多元回归和支持向量机(SVM)分析,以建立牛肉嫩度的预测模型。将嫩或坚韧分类牛排的子样本(80%)用于训练模型,然后在剩余的(20%)测试牛排上验证模型。对于彩色图像,SVM 模型准确地识别出了 100%的嫩牛排,而逐步方程正确识别出了 94.9%的嫩牛排。对于多光谱图像,SVM 模型预测的牛肉嫩度平均准确率为 91%,逐步方程预测的准确率为 87%。