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A nondestructive intelligent approach to real-time evaluation of chicken meat freshness based on computer vision technique

机译:基于计算机视觉技术的鸡肉新鲜实时评估的非破坏性智能方法

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摘要

In this study, the capability of a procedure based on combination of computer vision (CV) and artificial intelligence techniques examined for intelligent and nondestructive prediction of chicken meat freshness during the spoilage process at 4 degrees C. The proposed system comprises the following stages: capture images, image preprocessing, image processing, computing channels, feature extraction, feature selection by a hybrid of genetic algorithm (GA) and artificial neuronal network (ANN), and prediction by using ANN. The number of neurons in input layer was determined 33 (selected features) and freshness used as the output. The ideal ANN model was obtained with 33-10-1 topology. The high performance of the model was provided with a correlation coefficient of 0.98734 and MSE of 0.002045. The encouraging results of the current study obviously indicated the high potential of CV-based system combined with an intelligence method as a smart, nondestructive, and reliable technique for online evaluation of chicken meat freshness. Practical application Diagnosis and estimation of chicken meat freshness are considered a significant concern in meat quality for consumers. Computer Vision as a novel nondestructive technique can be utilized to evaluate the quality of products. We present the potential of computer vision-based method as a smart, nondestructive, and reliable method for online prediction of the freshness of chicken meat.
机译:在本研究中,基于计算机视觉(CV)的组合和人工智能技术的过程的能力在4摄氏度下检查了腐败过程中的鸡肉新鲜度的智能和非破坏预测。所提出的系统包括以下阶段:捕获图像,图像预处理,图像处理,计算信道,特征提取,遗传算法(GA)和人工神经网络(ANN)的混合特征选择,以及使用ANN的预测。输入层中的神经元数是确定33(选定的特征)和用作输出的新鲜度。用33-10-1拓扑获得理想的ANN模型。该模型的高性能具有0.98734和MSE为0.002045的相关系数。目前研究的令人鼓舞的结果显然表明了基于CV的系统的高潜力,结合了一种智能,无损,可靠的鸡肉新鲜的在线评估技术。实际应用诊断和鸡肉新鲜的估算被认为是消费者肉质质量的重要关注。计算机愿景作为一种新型无损技术,可用于评估产品的质量。我们展示了基于计算机视觉的方法作为智能,非破坏性和可靠方法,用于在线预测鸡肉的新鲜度。

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