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首页> 外文期刊>Ultrasonic Imaging: An International Journal >Ultrasound image texture analysis for characterizing intramuscular fat content of live beef cattle.
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Ultrasound image texture analysis for characterizing intramuscular fat content of live beef cattle.

机译:超声图像纹理分析,用于表征活牛的肌肉内脂肪含量。

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摘要

The primary factors in determining beef quality grades are the amount and distribution of intramuscular fat percentage (IMFAT). Texture analysis was applied to ultrasound B-mode images from ribeye muscle of live beef cattle to predict its IMFAT. We used wavelet transform (WT) for multiresolutional texture analysis and second-order statistics using a gray-level co-occurrence matrix (GLCM) technique. Sets of WT- and GLCM-based texture features were calculated from ultrasonic images from 207 animals and linear regression methods were used for IMFAT prediction. WT-based features included energy ratios, central moments of wavelet-decomposed subimages and wavelet edge density. The regression model using WT features provided a root mean square error (RMSE) of 1.44 for prediction of IMFAT using validation images, while that of GLCM features provided an RMSE of 1.90. The prediction models using the WT features showed potential for objective quality evaluation in the live animals.
机译:确定牛肉质量等级的主要因素是肌内脂肪百分比(IMFAT)的数量和分布。将纹理分析应用于来自活肉牛肋眼肌的B超图像,以预测其IMFAT。我们使用小波变换(WT)进行多分辨率纹理分析,并使用灰度共生矩阵(GLCM)技术进行二阶统计。从207只动物的超声图像中计算出基于WT和GLCM的纹理特征集,并将线性回归方法用于IMFAT预测。基于WT的特征包括能量比,小波分解的子图像的中心矩和小波边缘密度。使用WT特征的回归模型提供1.44的均方根误差(RMSE),用于使用验证图像预测IMFAT,而GLCM特征的均方根误差提供的RMSE为1.90。使用WT特征的预测模型显示了在活体动物中进行客观质量评估的潜力。

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