Lu J, Tan J, Shatadal P, Gerrard D E
Department of Biological and Agricultural Engineering, University of Missouri,, Columbia, MO 65211,USA.
Meat Sci. 2000 Sep;56(1):57-60. doi: 10.1016/s0309-1740(00)00020-6.
The objective of this study was to determine the potential of computer vision technology for evaluating fresh pork loin color. Software was developed to segment pork loin images into background, muscle and fat. Color image features were then extracted from segmented images. Features used in this study included mean and standard deviation of red, green, and blue bands of the segmented muscle area. Sensory scores were obtained for the color characteristics of the lean meat from a trained panel using a 5-point color scale. The scores were based on visual perception and ranged from 1 to 5. Both statistical and neural network models were employed to predict the color scores by using the image features as inputs. The statistical model used partial least squares technique to derive latent variables. The latent variables were subsequently used in a multiple linear regression. The neural network used a back-propagation learning algorithm. Correlation coefficients between predicted and original sensory scores were 0.75 and 0.52 for neural network and statistical models, respectively. Prediction error was the difference between average sensory score and the predicted color score. An error of 0.6 or lower was considered negligible from a practical viewpoint. For 93.2% of the 44 pork loin samples, prediction error was lower than 0.6 in neural network modeling. In addition, 84.1% of the samples gave an error lower than 0.6 in the statistical predictions. Results of this study showed that an image processing system in conjunction with a neural network is an effective tool for evaluating fresh pork color.
本研究的目的是确定计算机视觉技术评估新鲜猪里脊肉颜色的潜力。开发了软件将猪里脊肉图像分割为背景、肌肉和脂肪。然后从分割后的图像中提取彩色图像特征。本研究中使用的特征包括分割后肌肉区域的红色、绿色和蓝色波段的均值和标准差。由经过训练的评估小组使用5分制颜色量表对瘦肉的颜色特征进行感官评分。评分基于视觉感知,范围为1至5。使用图像特征作为输入,采用统计模型和神经网络模型来预测颜色评分。统计模型使用偏最小二乘法技术导出潜在变量。随后将潜在变量用于多元线性回归。神经网络使用反向传播学习算法。神经网络模型和统计模型预测值与原始感官评分之间的相关系数分别为0.75和0.52。预测误差是平均感官评分与预测颜色评分之间的差值。从实际角度来看,0.6或更低的误差被认为是可以忽略不计的。在神经网络建模中,44个猪里脊肉样本中有93.2%的预测误差低于0.6。此外,在统计预测中,84.1%的样本误差低于0.6。本研究结果表明,结合神经网络的图像处理系统是评估新鲜猪肉颜色的有效工具。