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Visibleear-infrared hyperspectral imaging for beef tenderness prediction.

机译:可见/近红外高光谱成像,用于预测牛肉的嫩度。

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Beef tenderness is an important quality attribute for consumer satisfaction. The current beef quality grading system does not incorporate a direct measure of tenderness because there is currently no accurate, rapid, nondestructive method for predicting tenderness available to the beef industry. The objective of this study was to develop and test a visibleear-infrared hyperspectral imaging system to predict tenderness of 14-day aged, cooked beef from hyperspectral images of fresh ribeye steaks acquired at 14-day post-mortem. A pushbroom hyperspectral imaging system (wavelength range: 400-1000 nm) with a diffuse-flood lighting system was developed and calibrated. Hyperspectral images of beef-steak (n=111) at 14-day post-mortem were acquired. After imaging, steaks were cooked and slice shear force (SSF) values were collected as a tenderness reference. All images were corrected for reflectance. After reflectance calibration, a region-of-interest (ROI) of 200x600 pixels at the center was selected and principal component analysis was carried out on the ROI images to reduce the dimension along the spectral axis. The first five principal components explained over 90% of the variance of all spectral bands in the image. Gray-level textural co-occurrence matrix analysis was conducted to extract second-order statistical textural features from the principal component images. These features were then used in a canonical discriminant model to predict three beef tenderness categories, namely tender (SSF <=205.80 N), intermediate (205.80 N < SSF <254.80 N), and tough (SSF >=254.80 N). With a leave-one-out cross-validation procedure, the model predicted the three tenderness categories with a 96.4% accuracy. All of the tough samples were correctly identified. Our results indicate that hyperspectral imaging has considerable promise for predicting beef tenderness.
机译:牛肉嫩度是提高消费者满意度的重要品质属性。当前的牛肉质量分级系统并未包含对嫩度的直接测量,因为目前尚无准确,快速,无损的方法来预测牛肉行业的嫩度。这项研究的目的是开发和测试可见/近红外高光谱成像系统,以从验尸后14天获取的新鲜肋眼牛排的高光谱图像中预测14天熟牛肉的嫩度。开发并校准了带有漫射照明系统的推扫式高光谱成像系统(波长范围:400-1000 nm)。采集后14天的牛排( n = 111)的高光谱图像。成像后,将牛排煮熟,并收集切片切力(SSF)值作为嫩度参考。校正所有图像的反射率。反射率校准后,选择中心200x600像素的感兴趣区域(ROI),并对ROI图像进行主成分分析以减小沿光谱轴的尺寸。前五个主要成分解释了图像中所有光谱带的90%以上的方差。进行灰度纹理共现矩阵分析,从主成分图像中提取二阶统计纹理特征。然后将这些特征用于规范判别模型中,以预测三个牛肉嫩度类别,即嫩(SSF <= 205.80 N),中间(205.80 N = 254.80 N)。通过一劳永逸的交叉验证程序,该模型以96.4%的准确性预测了三个压痛类别。所有坚硬的样品均已正确识别。我们的结果表明,高光谱成像在预测牛肉嫩度方面具有可观的前景。

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