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首页> 外文期刊>Journal of the Science of Food and Agriculture >Evaluating the potential of artificial neural network and neuro-fuzzy techniques for estimating antioxidant activity and anthocyanin content of sweet cherry during ripening by using image processing.
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Evaluating the potential of artificial neural network and neuro-fuzzy techniques for estimating antioxidant activity and anthocyanin content of sweet cherry during ripening by using image processing.

机译:利用图像处理技术评估了人工神经网络和神经模糊技术在成熟过程中估算甜樱桃抗氧化活性和花色苷含量的潜力。

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BACKGROUND: This paper presents a versatile way for estimating antioxidant activity and anthocyanin content at different ripening stages of sweet cherry by combining image processing and two artificial intelligence (AI) techniques. In comparison with common time-consuming laboratory methods for determining these important attributes, this new way is economical and much faster. The accuracy of artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) models was studied to estimate the outputs. Sensitivity analysis and principal component analysis were used with ANN and ANFIS respectively to specify the most effective attributes on outputs. RESULTS: Among the designed ANNs, two hidden layer networks with 11-14-9-1 and 11-6-20-1 architectures had the highest correlation coefficients and lowest error values for modeling antioxidant activity (R=0.93) and anthocyanin content (R=0.98) respectively. ANFIS models with triangular and two-term Gaussian membership functions gave the best results for antioxidant activity (R=0.87) and anthocyanin content (R=0.90) respectively. CONCLUSION: Comparison of the models showed that ANN outperformed ANFIS for this case. By considering the advantages of the applied system and the accuracy obtained in somewhat similar studies, it can be concluded that both techniques presented here have good potential to be used as estimators of proposed attributes.
机译:背景:本文提出了一种通过结合图像处理和两种人工智能技术来估算甜樱桃不同成熟阶段的抗氧化活性和花色苷含量的通用方法。与确定这些重要属性的常用耗时的实验室方法相比,这种新方法经济且速度更快。研究了人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)模型的准确性,以估计输出。分别使用ANN和ANFIS进行敏感性分析和主成分分析,以指定输出中最有效的属性。结果:在设计的人工神经网络中,两个具有11-14-9-1和11-6-20-1架构的隐藏层网络在建模抗氧化剂活性(R = 0.93)和花色苷含量(R = 0.93)时具有最高的相关系数和最低的误差值。 R = 0.98)。具有三角形和两项高斯隶属函数的ANFIS模型分别给出了抗氧化剂活性(R = 0.87)和花青素含量(R = 0.90)的最佳结果。结论:模型比较表明,在这种情况下,人工神经网络优于ANFIS。通过考虑所应用系统的优势和在一些相似的研究中获得的准确性,可以得出结论,此处介绍的两种技术都有很好的潜力可用作拟议属性的估计器。

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