FRCFT Research Group, Biosystems Engineering, University College Dublin, National University of Ireland, Agriculture & Food Science Centre, Belfield, Dublin 4, Ireland.
Meat Sci. 2010 Apr;84(4):711-7. doi: 10.1016/j.meatsci.2009.10.030. Epub 2009 Nov 16.
A method to discriminate between various grades of pork and turkey ham was developed using colour and wavelet texture features. Image analysis methods originally developed for predicting the palatability of beef were applied to rapidly identify the ham grade. With high quality digital images of 50-94 slices per ham it was possible to identify the greyscale that best expressed the differences between the various ham grades. The best 10 discriminating image features were then found with a genetic algorithm. Using the best 10 image features, simple linear discriminant analysis models produced 100% correct classifications for both pork and turkey on both calibration and validation sets.
开发了一种使用颜色和小波纹理特征来区分不同等级猪肉和火鸡肉火腿的方法。最初为预测牛肉口感而开发的图像分析方法被应用于快速识别火腿等级。通过对每根火腿的 50-94 片高质量数字图像进行分析,确定了最佳灰度级,能够清晰地显示出不同火腿等级之间的差异。然后,使用遗传算法找到了最佳的 10 个区分图像特征。使用这 10 个最佳图像特征,简单线性判别分析模型对校准集和验证集上的猪肉和火鸡肉都实现了 100%的正确分类。