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Estimating Chlorophyll Content of Rice Based on UAV-Based Hyperspectral Imagery and Continuous Wavelet Transform

机译:基于UAV的高光谱图像和连续小波变换估算米叶绿素含量

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Chlorophyll is an essential pigment for photosynthesis of crops, which indicates the growth status of crops. Accurate and robust information on the spatial dynamics of chlorophyll content is of critical importance for crop growth status assessment and corresponding response activities. However, previous studies mainly focus on the methodologies based on in situ hyperspectral data, which are not applicative for regional chlorophyll content mapping. In this content, Unmanned Aerial Vehicle (UAV) based hyperspectral imagery, with high spatial and spectral resolution, may provide the spatial distribution of chlorophyll content accurately over crop fields. In this study, an empirical model between wavelet features, derived from UAV based hyperspectral imagery by continuous wavelet transform (CWT), and chlorophyll content (measured by a portable soil–plant analysis development meter) is proposed by support vector regression (SVR). The results suggest that the UAV based hyperspectral imagery combined with CWT demonstrates good performance in rice chlorophyll content estimation with R and RMSE of 0.81 and 3.51, respectively. Moreover, the wavelet coefficients corresponding to two bands at red (640nm, 628nm) and one band at green (548nm) are the most effective wavelet features to estimate chlorophyll content of rice.
机译:叶绿素是作物光合作用的必需颜料,这表明作物的生长状况。关于叶绿素内容的空间动态的准确和强大的信息对于作物生长状态评估和相应的响应活动至关重要。然而,以前的研究主要关注基于原位高光谱数据的方法,这不是区域叶绿素内容映射的应用。在这种内容中,具有高空间和光谱分辨率的基于无人的空中车辆(UAV)的高光谱图像可以在作物领域精确地提供叶绿素内容的空间分布。在本研究中,通过支持向量回归(SVR)提出了由连续小波变换(CWT)和叶绿素含量(通过便携式土壤 - 植物分析开发表测量)来源的小波特征之间的经验模型。结果表明,基于UAV基的高光谱图像与CWT相结合,分别在水稻叶绿素含量估计中分别表现出良好的0.81和3.51的叶绿素含量估计。此外,对应于红色(640nm,628nm)和绿色(548nm)的一个带对应于两个带的小波系数是最有效的小波特征,以估计水稻的叶绿素含量。

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