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Application of texture image analysis for the classification of bovine meat

机译:纹理图像分析在牛肉分类中的应用

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Texture analysis has been used to classify photographic images of meat slices. Among the multiple muscular tissue characteristics that influence meat quality, the connective tissue content and spatial distribution, which define the grain of meat, are of great importance because they are directly related to its tenderness. Connective tissue contains two important components, fat and collagen, which are variable with muscles, breed and also with age. These components are clearly visible on photographic images. Fat and collagen are particularly emphasised by ultraviolet light. The meat slices analysed came from 26 animals raised at INRA of Theix by the LCMH Laboratory. Three different muscles were selected and cut off from carcasses of animals of different breeds and of different ages. The biological factors (muscle type, age and breed) directly influence the structure and composition of the muscle samples. The image analysis led to a representation of each meat sample with a 58 features vector. Classification experiments were performed to identify the samples according to the three variation factors. This study shows the potential of image analysis for meat sample recognition. The correlation of the textura1 features with chemical and mechanical parameters measured on the meat samples was also examined. Regression experiments showed that textural features have potential to indicate meat characteristics.
机译:纹理分析已用于对肉片的摄影图像进行分类。在影响肉质的多种肌肉组织特征中,定义肉粒的结缔组织含量和空间分布非常重要,因为它们与肉的嫩度直接相关。结缔组织包含两个重要成分,脂肪和胶原蛋白,它们随肌肉,品种以及年龄而变化。这些成分在摄影图像上清晰可见。紫外线特别强调脂肪和胶原蛋白。分析的肉片来自LCMH实验室在Theix的INRA饲养的26只动物。选择了三种不同的肌肉,并从不同品种和不同年龄的动物的尸体上切下。生物学因素(肌肉类型,年龄和品种)直接影响肌肉样本的结构和组成。图像分析导致每个肉样品具有58个特征向量。根据三个变异因素进行分类实验以鉴定样品。这项研究显示了图像分析在肉样品识别中的潜力。还检查了textura1特征与在肉样品上测得的化学和机械参数的相关性。回归实验表明,质地特征有可能表明肉的特性。

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