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Gaussian Mixture Model-Based Walnut Shell and Meat Classification in Hyperspectral Fluorescence Imagery

机译:高光谱荧光图像中基于高斯混合模型的核桃壳和肉分类

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A bstract . Classifying the shells and meat of walnuts is necessary when harvesting them. During the last decade, hyperspectral imaging techniques have been widely used in agriculture for quality inspection. This article demonstrates that hyperspectral fluorescence imaging is capable of analyzing the difference between walnut shells and meat, and proposes a principal component analysis and Gaussian mixture model (PCA-GMM)-based Bayesian classifier to discriminate between the shell and the meat. PCA was first used to extract features and reduce the redundancy of the input data. The optimal number of components in PCA classification was selected by a cross-validation technique. Then the PCA-GMM-based Bayesian classifier was applied to differentiate the walnut shell and meat according to the class-conditional probability and the prior estimated by the Gaussian mixture model. Furthermore, a cross-validation method was used to evaluate robustness of the proposed classification method. Finally, the PCA-GMM and GMM methods were compared. The experimental results showed the effectiveness of the proposed approach in the application of walnut shell and meat classification, and an overall 95.6% recognition rate was achieved.
机译:一个抽象的。收获核桃时,必须对核桃的壳和肉进行分类。在过去的十年中,高光谱成像技术已在农业中广泛用于质量检查。本文证明了高光谱荧光成像技术能够分析核桃壳和肉之间的差异,并提出了一种基于主成分分析和基于高斯混合模型(PCA-GMM)的贝叶斯分类器来区分壳和肉的方法。 PCA最初用于提取特征并减少输入数据的冗余。通过交叉验证技术选择PCA分类中的最佳组分数。然后基于分类条件概率和高斯混合模型的先验估计,基于PCA-GMM的贝叶斯分类器被用于区分核桃壳和肉。此外,使用交叉验证方法来评估所提出分类方法的鲁棒性。最后,比较了PCA-GMM和GMM方法。实验结果表明,该方法在核桃壳和肉类分类中的应用是有效的,总体识别率达到95.6%。

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