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Plant Species Identification Based on Independent Component Analysis for Hyperspectral Data

机译:基于独立成分分析的高光谱数据植物物种识别

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摘要

By investigating the possibility of plant species classification based on independent component analysis (ICA) for hyperspectral data with minor difference, the framework of a general plant species classification model that consists of ICA based data reduction, classifier training and verification is proposed in this paper. Five different types of discriminant analysis classifiers including Linear, Quadratic, DiagLinear, DiagQuatic and Mahalanobis, with data reduction that based on principal components analysis (PCA) and ICA, are implemented and compared. Accuracy assessment of classification for real leaf hyperspectral data is demonstrated, indicating that data reduction based on ICA performs better than that of PCA. Moreover, the proposed classification model with ICA based data reduction and Quadratic Discriminant Analysis works best, and its accuracy is about 98.35% with dimension 25 reduced from 2500.
机译:通过研究基于独立分量分析(ICA)的植物物种分类的可能性,对高光谱数据进行细微的区分,提出了一种基于ICA的数据约简,分类器训练和验证的通用植物物种分类模型的框架。实施和比较了五种不同类型的判别分析分类器,包括线性,二次,DiagLinear,DiagQuatic和Mahalanobis,并基于主成分分析(PCA)和ICA进行了数据归约。证明了对真实叶片高光谱数据进行分类的准确性评估,表明基于ICA的数据约简效果优于PCA。此外,所提出的基于ICA的数据约简和二次判别分析的分类模型效果最好,其精度约为98.35%,而维度25从2500减少。

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