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A Meta-heuristic Approach for Design of Image Processing Based Model for Nitrosamine Identification in Red Meat Image

机译:基于图像处理的亚硝胺鉴定模型设计的元 - 启发式方法

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Background: Nitrosamine is a chemical, commonly used as a preservative in red meat whose intake can cause serious carcinogenic effects on human health. The identification of such malignant chemicals in foodstuffs is an ordeal. Objective: The objective of the proposed research work presents a meta-heuristic approach for nitrosamine detection in red meat using a computer vision-based non-destructive method. Methods: This paper presents an analytical approach for assessing the quality of meat samples upon storage (24, 48, 72 and 96 hours). A novel machine learning-based method involving the strategic selection of discriminatory features of segmented images has been proposed. The significant features were determined by finding p-values using the Mann-Whitney U test at a 95% confidence interval, which were classified using partial least square-discriminant analysis (PLS-DA) algorithm. Subsequently, the predicted model was evaluated by the bootstrap technique, which projects an outline for preservative identification in meat samples. Results: The simulation results of the proposed meta-heuristic computer vision-based model demonstrate improved performance in comparison to the existing methods. Some of the prevailing machine learning-based methods were analyzed and compared from a survey of recent patents with the proposed technique in order to affirm new findings. The performance of the PLS-DA model was quantified by the receiver operating characteristics (ROC) curve at all classification thresholds. A maximum of 100% sensitivity and 71.21% specificity was obtained from the optimum threshold of 0.5964. The concept of bootstrapping was used for evaluating the predicted model. Nitrosamine content in the meat samples was predicted with a 0.8375 correlation coefficient and 0.109 bootstrap error. Conclusion: The proposed method comprehends the double-cross validation technique, which makes it more comprehensive in discriminating between the edibility of foodstuff, which can certainly reinstate conventional methods and ameliorate existing computer-vision methods.
机译:背景:亚硝胺是一种化学品,通常用作红肉中的防腐剂,其摄入可能导致对人体健康的严重致癌作用。在食品中鉴定这种恶性化学品是一种磨难。目的:采用计算机视觉的非破坏性方法,拟议研究工作的目的是红肉中亚硝胺检测的荟萃拟启发式方法。方法:本文提出了一种分析方法,用于评估储存时肉类样品的质量(24,48,72和96小时)。提出了一种基于新型机器学习的方法,涉及分段图像的歧视性特征的战略选择。通过使用95%置信区间的Mann-Whitney U测试找到p值来确定显着特征,其使用局部最小二乘判别分析(PLS-DA)算法进行分类。随后,通过引导技术评估预测模型,其投影肉类样品中的防腐鉴定概要。结果:建议的荟萃启发式计算机视觉模型的仿真结果表明了与现有方法相比的改进的性能。分析了一些主要的机器学习的方法,并从最近专利的调查进行了分析,并与所提出的技术进行了调查,以确认新发现。通过所有分类阈值的接收器操作特性(ROC)曲线量化PLS-DA模型的性能。从最佳阈值0.5964获得最大100%的灵敏度和71.21%的特异性。引导概念用于评估预测模型。肉类样品中的亚硝胺含量被预测为0.8375相关系数和0.109引导误差。结论:该方法理解双交叉验证技术,这使得在食品可解觉的区分中更加全面,肯定可以恢复常规方法和改善现有的计算机视觉方法。

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