Feature extraction algorithms from MRI to evaluate quality parameters on meat products by using data mining

Q4 Computer Science
Daniel Caballero Jorna
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引用次数: 4

Abstract

This thesis proposes a new methodology to determine the quality characteristics of meat products (Iberian loin and ham) in a non-destructive way. For that, new algorithms have been developed to analyze Magnetic Resonance Imaging (MRI), and data mining techniques have been applied on data obtained from the images.The general procedure consists of obtaining MRI of meat products, and applying different computer vision algorithms (texture and fractal approaches, mainly), which allow the extraction of sets of computational features. Figure 1 shows the design of the proposed procedure.To achieve this, different research have been done, based on:high-field and low-field MRI scannersdifferent acquisition sequences: Spin Echo (SE), Gradient Echo (GE) and Turbo 3D (T3D)different texture approaches: Gray Level Co-occurrence Matrix (GLCM), Gray Level Run Length Matrix (GLRLM) and Neighboring Gray Level Dependence Matrix (NGLDM)fractals algorithms: Classical Fractal Algorithm (CFA), Fractal Texture Algorithm (FTA) and One Point Fractal Texture Algorithm (OPFTA)FTA [1] and OPFTA [2] have been developed in this thesis. They allow analyzing MRI images, properly, noting OPFTA for its simplicity and lower computational cost. At the same time, the meat products, Iberian hams and loins, were also analyzed by means of physico-chemical and sensory techniques. Databases were constructed with all these data. Different data mining techniques have been applied on them: deductive (Multiple Linear Regression (MLR)) [3], classification (Decision Trees (DT) and Rules-based Systems (RBS)) [4], and prediction techniques [5-7]. Figure 2 shows the MRI images of fresh and dry-cured Iberian loins (Figure 2A and 2B) and fresh and dry-cured hams (Figure 2C and 2D).The accuracy of the analysis of the quality parameters of Iberian ham and loin is affected by the MRI acquisition sequence, the algorithm used to analyze them and the data mining technique applied. Considering the data mining techniques, MLR and DT are appropriate, respectively, to deduce physico-chemical parameters of hams, and to classify as a function of salt content in hams. Regarding to the predictive technique, MLR could be indicate it allows obtaining equations to determine the physico-chemical characteristics and sensory attributes of Iberian loins and hams with a high degree of reliability, and analyzing the quality of these meat products in a non-destructive, efficient, effective and accurate way.
基于数据挖掘的MRI特征提取算法评价肉制品质量参数
本文提出了一种新的方法来确定肉类产品(伊比利亚腰肉和火腿)的质量特征,以一种非破坏性的方式。为此,人们开发了新的算法来分析磁共振成像(MRI),并将数据挖掘技术应用于从图像中获得的数据。一般程序包括获取肉制品的MRI,并应用不同的计算机视觉算法(主要是纹理和分形方法),这些算法允许提取计算特征集。图1显示了提议过程的设计。为此,开展了不同的研究,基于:高场和低场MRI扫描仪;不同的采集序列:自旋回波(SE)、梯度回波(GE)和Turbo 3D (T3D);不同的纹理方法:灰度共发生矩阵(GLCM)、灰度运行长度矩阵(GLRLM)和相邻灰度依赖矩阵(NGLDM)分形算法;本文发展了经典分形算法(Classical Fractal Algorithm, CFA)、分形纹理算法(Fractal Texture Algorithm, FTA)和一点分形纹理算法(One Point Fractal Texture Algorithm, OPFTA)[1]和OPFTA[2]。它们可以正确地分析MRI图像,注意到OPFTA的简单性和较低的计算成本。同时,对伊比利亚火腿和里脊肉等肉制品进行了理化和感官分析。数据库是用所有这些数据构建的。不同的数据挖掘技术已经应用于它们:演绎(多元线性回归(MLR))[3],分类(决策树(DT)和基于规则的系统(RBS))[4],以及预测技术[5-7]。图2显示了新鲜和干腌伊比利亚腰肉(图2A和2B)以及新鲜和干腌火腿(图2C和2D)的MRI图像。MRI采集序列、分析算法和数据挖掘技术影响着伊比利亚火腿和腰肉质量参数分析的准确性。考虑到数据挖掘技术,MLR和DT分别适合推断火腿的理化参数,并将其分类为火腿中盐含量的函数。在预测技术方面,MLR可以表明,它可以获得方程,以高度可靠的方式确定伊比利亚腰肉和火腿的物理化学特性和感官属性,并以无损,高效,有效和准确的方式分析这些肉制品的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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