FRCFT Group, Biosystems Engineering, Agriculture and Food Science Centre, School of Agriculture, Food Science and Veterinary Medicine, University College Dublin, Belfield, Dublin 4, Ireland.
Meat Sci. 2010 Mar;84(3):455-65. doi: 10.1016/j.meatsci.2009.09.016. Epub 2009 Oct 2.
Images of three qualities of pre-sliced pork and Turkey hams were evaluated for colour and textural features to characterize and classify them, and to model the ham appearance grading and preference responses of a group of consumers. A total of 26 colour features and 40 textural features were extracted for analysis. Using Mahalanobis distance and feature inter-correlation analyses, two best colour [mean of S (saturation in HSV colour space), std. deviation of b*, which indicates blue to yellow in Lab* colour space] and three textural features [entropy of b*, contrast of H (hue of HSV colour space), entropy of R (red of RGB colour space)] for pork, and three colour (mean of R, mean of H, std. deviation of a*, which indicates green to red in Lab* colour space) and two textural features [contrast of B, contrast of L* (luminance or lightness in Lab* colour space)] for Turkey hams were selected as features with the highest discriminant power. High classification performances were reached for both types of hams (>99.5% for pork and >90.5% for Turkey) using the best selected features or combinations of them. In spite of the poor/fair agreement among ham consumers as determined by Kappa analysis (Kappa-value<0.4) for sensory grading (surface colour, colour uniformity, bitonality, texture appearance and acceptability), a dichotomous logistic regression model using the best image features was able to explain the variability of consumers' responses for all sensorial attributes with accuracies higher than 74.1% for pork hams and 83.3% for Turkey hams.
对三种切片猪肉和火鸡肉的图像进行了颜色和质地特征评估,以对其进行分类,并对一组消费者的火腿外观分级和偏好反应进行建模。共提取了 26 种颜色特征和 40 种质地特征进行分析。使用马氏距离和特征相关性分析,选择了两个最佳颜色[HSV 颜色空间中饱和度(S)的平均值,b的标准差,它表示 Lab颜色空间中的蓝到黄]和三个质地特征[b的熵,H(HSV 颜色空间中的色调)的对比度,R(RGB 颜色空间中的红色)的熵]用于猪肉,以及三个颜色[R 的平均值,H 的平均值,a的标准差,它表示 Lab颜色空间中的绿到红]和两个质地特征[B 的对比度,L的对比度(Lab*颜色空间中的亮度或光亮度)]作为具有最高判别力的特征。使用最佳选择的特征或它们的组合,对两种类型的火腿都达到了较高的分类性能(猪肉>99.5%,火鸡肉>90.5%)。尽管通过 Kappa 分析(Kappa 值<0.4)对感官分级(表面颜色、颜色均匀性、双色性、质地外观和可接受性)确定火腿消费者之间的一致性较差/一般,但使用最佳图像特征的二项逻辑回归模型能够解释消费者对所有感官属性的反应变化,猪肉火腿的准确率高于 74.1%,火鸡肉火腿的准确率高于 83.3%。