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首页> 外文期刊>Journal of food engineering >Application of image texture for the sorting of tea categories using multi-spectral imaging technique and support vector machine
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Application of image texture for the sorting of tea categories using multi-spectral imaging technique and support vector machine

机译:图像纹理在多光谱成像技术和支持向量机对茶类分类中的应用

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摘要

Multi-spectral imaging technique was applied to sorting the green tea category. 320 images were captured at three wavelengths (580, 680 and 800 nm) using a multi-spectral digital camera. Entropy values of images were obtained as image texture features. The correction answer rate of least squares-support vector machine (LS-SVM) with radial basis function kernel was up to 100% which was better than those of LS-SVM with linear kernel, partial least squares and radial basis function neural networks, respectively. Results of generation ability test shows that LS-SVM with radial basis function kernel could be effectively used for the application on a few samples. It could be concluded that it is possible to take multi-spectral images of tea and tell which category it is. The whole process is simple, fast, non-destructive and easy to operate.
机译:多光谱成像技术被应用于绿茶类别的分类。使用多光谱数码相机以三种波长(580、680和800 nm)捕获了320张图像。获得图像的熵值作为图像纹理特征。具有径向基函数核的最小二乘支持向量机(LS-SVM)的校正回答率高达100%,分别优于具有线性核,偏最小二乘和径向基函数神经网络的LS-SVM。 。生成能力测试结果表明,带有径向基函数核的LS-SVM可以有效地用于少数样品。可以得出结论,可以拍摄茶的多光谱图像并分辨出茶的类别。整个过程简单,快速,无损且易于操作。

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