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Grain Recognition Using Local Binary Patterns Variants as Texture Descriptors

机译:使用局部二进制模式变体作为纹理描述符的颗粒识别

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This paper focuses on the use of imaged-based machine learning techniques for identifing grain. In particular we compare several texture descriptors based on Local Binary Patterns(LBP),and we report new experiments using a set of novel texture descriptors based on the combination of the Elongated Quinary Pattern (EQP), the Elongated Ternary Pattern (ELTP) and the Elongated Binary Patterns(ELBP).These three variants of the standard LBP are obtained by considering different shapes for the neighborhood calculation and different encodings for the evaluation of the local gray-scale difference. The resulting extracted features are then used for training a machine-learning classifier(support vector machine). Our results show that a local approach based on the EQP feature extractor, which can express both local and holistic features of the grain image, produces a reliable system for identifing grain.
机译:本文重点介绍基于图像的机器学习技术在谷物识别中的应用。特别是,我们比较了几种基于局部二值模式(LBP)的纹理描述符,并报告了一组基于伸长五进制模式(EQP),伸长三元模式(ELTP)和线性三元模式的新纹理描述符的新实验。伸长的二进制图案(ELBP):这三种标准LBP的变体是通过考虑用于邻域计算的不同形状和用于评估局部灰度差异的不同编码而获得的。然后将提取出的特征用于训练机器学习分类器(支持向量机)。我们的结果表明,基于EQP特征提取器的局部方法可以表达谷物图像的局部特征和整体特征,从而产生了可靠的谷物识别系统。

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