首页> 外文期刊>Engineering Applications of Artificial Intelligence >Magnetic Resonance Imaging, texture analysis and regression techniques to non-destructively predict the quality characteristics of meat pieces
【24h】

Magnetic Resonance Imaging, texture analysis and regression techniques to non-destructively predict the quality characteristics of meat pieces

机译:磁共振成像,质地分析和回归技术可无损预测肉块的质量特征

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

The quality of meat products is traditionally assessed by chemical or sensorial analysis, which are time consuming, need specialized technicians and destroy the products. The development of new technologies to monitor meat pieces using non-destructive methods in order to establish their quality is earning importance in the last years. An increasing number of studies have been carried out on meat pieces combining Magnetic Resonance Imaging (MRI), texture descriptors and regression techniques to predict several physico-chemical or sensorial attributes of the meat, mainly different types of pig ham and loins. In spite of the importance of the problem, the conclusions of these works are still preliminary because they only use the most classical texture descriptors and regressors instead of stronger methods, and because the methodology used to measure the performance is optimistic. In this work, we test a wide range of texture analysis techniques and regression methods using a realistic methodology to predict several physico-chemical and sensorial attributes of different meat pieces of Iberian pigs. The texture descriptors include statistical techniques, like Haralick descriptors, local binary patterns, fractal features and frequential descriptors, like Gabor or wavelet features. The regression techniques include linear regressors, neural networks, deep learning, support vector machines, regression trees, ensembles, boosting machines and random forests, among others. We developed experiments using 15 texture feature vectors, 28 regressors over 4 datasets of Iberian pig meat pieces to predict 39 physico-chemical and sensorial attributes, summarizing 16,380 experiments. There is not any combination of texture vector and regressor which provides the best result for all attributes tested. Nevertheless, all these experiments provided the following conclusions: (1) the regressor performance, measured using the squared correlation (R-2), is from good to excellent (above 0.5625) for 29 out of 39 attributes tested; (2) the WAPE (Weighted Absolute Percent Error) is lower than 2% for 32 out of 37 attributes; (3) the dispersion in computer predictions around the true attributes is lower or similar than the dispersion in the labeling expert's for the majority of attributes (85%); and (4) differences between predicted and true values are not statistically significant for 29 out of 37 attributes using the Wilcoxon ranksum statistical test. We can conclude that these results provide a high reliability for an automatic system to predict the quality of meat pieces, which may operate on-line in the meat industries in the future.
机译:肉类产品的质量传统上是通过化学或感官分析来评估的,这很耗时,需要专门的技术人员并破坏产品。在过去的几年中,开发新技术以使用非破坏性方法监控肉块以确保其质量的重要性日益增加。结合磁共振成像(MRI),纹理描述符和回归技术对肉块进行了越来越多的研究,以预测肉的几种物理化学或感官属性,主要是猪火腿和猪腰的不同类型。尽管存在问题的重要性,但这些工作的结论仍是初步的,因为它们仅使用最经典的纹理描述符和回归函数,而不是更强大的方法,并且用于测量性能的方法是乐观的。在这项工作中,我们使用一种现实的方法来测试各种结构分析技术和回归方法,以预测伊比利亚猪不同肉块的几种物理化学和感官属性。纹理描述符包括统计技术,例如Haralick描述符,局部二进制模式,分形特征和频繁描述符,例如Gabor或小波特征。回归技术包括线性回归器,神经网络,深度学习,支持向量机,回归树,合奏,助推器和随机森林等。我们使用15个纹理特征向量,28个回归因子在4个伊比利亚猪肉块数据集上开发了实验,以预测39个理化和感官属性,总结了16,380个实验。纹理矢量和回归变量没有任何组合可以为所有测试的属性提供最佳结果。尽管如此,所有这些实验都得出以下结论:(1)对于39个测试属性中的29个,使用平方相关(R-2)测得的回归器性能从良好到优异(高于0.5625); (2)对于37个属性中的32个,WAPE(加权绝对百分比误差)低于2%; (3)围绕真实属性的计算机预测中的散布低于或近似于针对大多数属性的标签专家中的散布(85%); (4)使用Wilcoxon ranksum统计检验,在37个属性中的29个属性中,预测值与真实值之间的差异在统计上并不显着。我们可以得出结论,这些结果为预测肉块质量的自动系统提供了高度的可靠性,该系统将来可能会在肉类行业中在线运行。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号