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Beef Quality Grading Using Machine Vision

机译:使用机器视觉对牛肉质量进行分级

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摘要

A video image analysis (VIA) system was developed to support automation of beef quality grading. Forty images of ribeye steaks were acquired. Fat and lean meat were differentiated using a fuzzy c-means clustering algorithm. Muscle longissimus dorsi (l.d.) was segmented from the ribeye using morphological operations. At the end of each iteration of erosion and dilation, a convex hull was fitted to the image and compactness was measured. The number of iterations was selected to yield the most compact l.d. Match between the l.d. muscle traced by an expert grader and that segmented by the program was 95.9%. Marbling and color features were extracted from the l.d. muscle and were used to build regression models to predict marbling and color scores. Quality grade was predicted using another regression model incorporating all features. Grades predicted by the model were statistically equivalent to the grades assigned by expert graders.
机译:开发了视频图像分析(VIA)系统以支持牛肉质量分级的自动化。采集了40张肋眼牛排的图像。使用模糊c均值聚类算法区分脂肪和瘦肉。使用形态学操作从肋眼中分割出背最长肌(l.d.)。在腐蚀和膨胀的每次迭代结束时,将凸包安装到图像上并测量紧密度。选择迭代次数以产生最紧凑的尺寸。 l.d.之间的匹配由专业的评分员追踪的肌肉和按程序划分的肌肉为95.9%。从l.d.中提取大理石花纹和颜色特征。并用于建立回归模型以预测大理石花纹和颜色得分。使用另一个包含所有功能的回归模型来预测质量等级。该模型预测的等级在统计上等同于专业评分员分配的等级。

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