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首页> 外文期刊>International journal of food properties >Discrimination of beef muscle based on visible-near infrared multi-spectral features: Textural and spectral analysis
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Discrimination of beef muscle based on visible-near infrared multi-spectral features: Textural and spectral analysis

机译:基于可见-近红外多光谱特征的牛肉肌肉识别:纹理和光谱分析

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The potential of multi-spectral visible-near infrared imaging to discriminate beef meat muscles in relation with their type and animal origin was examined in the present study. Two hundred forty muscles of three types (longissimus thoracis, biceps femoris , and semimembranosus ) were obtained from the carcasses of three types of animals, two late-maturing cattle types of animals (Limousin and Blond d’Aquitaine) that grow slowly and deposit more muscles and less fat, compared to one early-maturing cattle types of animals (Angus) which tends to have muscles richer in collagen and in intramuscular fat. Two hundred forty cube images were collected with nineteen Ligth Emitting Diodes (405 to 1050 nm) using the Videometer Lab2 device. The image cubes were processed in order to extract image mean spectra and image shape features from co-occurrence and difference of histogram matrices. The results of the partial least square discriminant analysis performed on image texture features and spectral data show a maximum ranging from 63.5 to 83% of good classification depending on the muscle and breed considered. This study demonstrated the promising potential of the visible-near infrared multi-spectral imager to characterize beef meat muscles based on muscle type and its animal origin.
机译:在本研究中,研究了多光谱可见-近红外成像在区分牛肉肌肉及其类型和动物来源方面的潜力。从三种动物的尸体,两种晚熟的牛类动物(利木赞和阿基坦大白鼠)的尸体中获得了三种类型的肌肉(雷氏最长肌,股二头肌和半膜肌)的240块肌肉。与一种较早生长的牛类动物(安格斯)相比,这种动物生长缓慢,并沉积了更多的肌肉和更少的脂肪,而后者的肌肉往往富含胶原蛋白和肌肉内脂肪。使用Videometer Lab2设备,用十九个发光二极管(405至1050 nm)收集了240个立方体图像。对图像立方体进行处理,以便从直方图矩阵的共现和差异中提取图像平均光谱和图像形状特征。对图像纹理特征和光谱数据执行的偏最小二乘判别分析结果显示,根据所考虑的肌肉和品种,良好分类的最大值介于63.5%至83%之间。这项研究证明了可见近红外多光谱成像仪基于肌肉类型及其动物起源表征牛肉肌肉的潜力。

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