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Color grading of beef fat by using computer vision and support vector machine

机译:利用计算机视觉和支持向量机对牛肉脂肪进行颜色分级

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Machine vision and support vector machine (SVM) were used to determine color scores of beef fat. One hundred and twenty-three of beef rib eye steaks were selected to sensory evaluation and image processing. After fat color score was assigned to each steak by a five-member panel according to the standard color cards, images were acquired for each steak. The subcutaneous fat was separated from the rib eye by using a sequence of image processing algorithms, boundary tracking, thresholding and morphological operation, etc. Twelve features of fat color (six features were extracted from the subcutaneous fat images and the other six were calculated) were used as input for SVM classifiers. The best SVM classifier was chosen according to percentage of correct classified samples based on the training set and then was validated by a nondependent test set. The proposed SVM classifier achieved the best performance percentage of 97.4%, showing that the machine vision combined with SVM discrimination method can provide an effective tool for predicting color scores of beef fat.
机译:机器视觉和支持向量机(SVM)用于确定牛肉脂肪的颜色评分。选择了123个牛肋眼牛排进行感官评估和图像处理。在由五人小组根据标准色卡为每个牛排分配了脂肪色评分之后,为每个牛排获取了图像。通过一系列图像处理算法,边界跟踪,阈值化和形态学运算等方法将皮下脂肪从肋眼中分离出来。十二个脂肪颜色特征(从皮下脂肪图像中提取了六个特征,并计算了其他六个特征)被用作SVM分类器的输入。根据正确的分类样本的百分比,根据训练集选择最佳的SVM分类器,然后通过非依赖性测试集进行验证。提出的SVM分类器实现了97.4%的最佳性能百分比,表明机器视觉与SVM判别方法相结合可以为预测牛肉脂肪的颜色评分提供有效的工具。

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