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首页> 外文期刊>Transactions of the ASABE >A Novel Method for Measuring the Color of Edible Oil on the Lovibond Scale Based on Spectral Detection and Convolutional Neural Network
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A Novel Method for Measuring the Color of Edible Oil on the Lovibond Scale Based on Spectral Detection and Convolutional Neural Network

机译:基于光谱检测和卷积神经网络测量Lovibond秤上可食用油颜色的一种新方法

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摘要

A fast, high-precision method for measuring the color of edible oil on the Lovibond scale was developed and validated. It involves two components: spectral detection and data processing. The former was used for measuring the edible oil's transmission spectrum in the visible range. The latter included a logarithmic method and a convolutional neural network (CNN) for calculating the color value from the transmission spectrum. The logarithmic method converted the multiplicative combination of spectra to an additive combination, which greatly improved the performance. A CNN with three convolutional layers was developed using Tensorflow. Validation tests of the method using ten different oil types showed a maximum error of 0.5, average error of 0.32, and error variance o0O 04. Thus, the proposed method can meet the needs of the edible oil industry, and it has great application potential.
机译:开发并验证了一种快速,高精度的测量可食用油颜色的方法。 它涉及两个组件:光谱检测和数据处理。 前者用于测量可见范围内的可食用油的透射光谱。 后者包括对数方法和用于计算来自传输频谱的颜色值的卷积神经网络(CNN)。 对数方法将光谱的乘法组合转换为添加剂组合,这大大提高了性能。 使用Tensorflow开发了具有三个卷积层的CNN。 使用十种不同的油类型的方法的验证测试显示了0.5的最大误差,平均误差为0.32,误差方差O0O 04.因此,所提出的方法可以满足食用油工业的需求,它具有很大的应用潜力。

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