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Continuous Wavelet Analysis Based Spectral Features Selection for Winter Wheat Yellow Rust Detection

机译:基于冬小麦黄色防锈检测的连续小波分析基于光谱特征选择

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Remote-sensing technologies can provide quick responses for determining the presence of yellow rust disease. However, most studies selected spectral indicators solely based on the statistical relevance to disease severity. Few of them investigated the underlying mechanism including the variation of biochemical properties due to the presence of disease. This study aims at identifying some mechanism based spectral features through continuous wavelet (CWT) analysis. An inoculation of yellow rust fungal was conducted in the experimental field. The hyperspectral data and biochemical properties including the content of water and pigment were measured for both infected and non-infected winter wheat plants. A two-tailed paired student t-test was used to identify the biochemical properties which have significant variation when the plants were infected. For those sensitive biochemical properties, a CWT transformation was then processed with the spectral data. The sensitive spectral features were selected through a correlation scalogram. It was found that the content of chlorophyll decreased significantly in yellow rust infected plants. Four spectral features were identified which could well reflect the chlorophyll content. The predicted model of chlorophyll content was thus established based on the partial least squares (PLS) regression. In addition, the linear discrimination analysis (LDA) was adopted in classifying the infected and non-infected plants. The classification accuracy reached 74.8% which indicated the selected spectral features have great potential in detecting the winter wheat yellow rust infection.
机译:遥感技术可以提供快速响应来确定黄色锈病的存在。然而,大多数研究单独选择光谱指标,仅基于与疾病严重程度的统计相关性。其中很少有人调查了由于疾病存在而导致的生化特性变异的潜在机制。本研究旨在通过连续小波(CWT)分析来识别基于机制的基于频谱特征。在实验领域进行了对黄色防锈真菌的接种。测量包括水和颜料含量的高光谱数据和生化特性,用于感染和未感染的冬小麦植物。双尾配对的学生T检验用于鉴定植物被感染时具有显着变化的生化特性。对于那些敏感的生物化学特性,然后用光谱数据处理CWT转化。通过相关标量程图选择敏感谱特征。发现黄色生锈感染植物中叶绿素的含量显着下降。鉴定了四种光谱特征,其可以很好地反映叶绿素含量。因此,基于部分最小二乘(PLS)回归建立了叶绿素含量的预测模型。此外,在分类感染和未感染的植物中采用了线性辨别分析(LDA)。分类准确度达到74.8%,指出所选光谱特征在检测冬小麦黄色锈病感染方面具有很大的潜力。

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