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Detection of Fusarium Wilt on Phalaenopsis Stem Base Region Using Band Selection Techniques

机译:用谱带选择技术检测蝴蝶兰茎基部区域枯萎病

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Phalaenopsis is a significant agriculture product with high economic value in Taiwan. However, the fusarium wilt causes Phalaenopsis leaves turning yellow, thinning, water loss, and finally died. This paper presents an emerging method to detect fusarium wilt on Phalaenopsis stem base. In order to build the detection models, the hyperspectral databases are generated form two statues of Phalaenopsis samples, which are health and disease sample. We applied band selection (BS) processing base on band prioritization (BP) and band de-correlation (BD) to extract the significant bands and eliminate the redundant bands. Then, three algorithms were used, orthogonal subspace projection (OSP), constrain energy minimization (CEM), and support vector machine (SVM) to detect the fusarium wilt.
机译:蝴蝶兰是台湾重要的农业产品,具有很高的经济价值。但是,枯萎病会导致蝴蝶兰的叶子变黄,变薄,失水,并最终死亡。本文提出了一种检测蝴蝶兰茎基上枯萎病的新兴方法。为了建立检测模型,从蝴蝶兰样品的两个雕像(健康和疾病样品)生成了高光谱数据库。我们基于频带优先级(BP)和频带去相关(BD)应用频带选择(BS)处理,以提取有效频带并消除冗余频带。然后,使用了三种算法:正交子空间投影(OSP),约束能量最小化(CEM)和支持向量机(SVM)来检测枯萎病。

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