期刊文献+

Spectroscopic Leaf Level Detection of Powdery Mildew for Winter Wheat Using Continuous Wavelet Analysis 被引量:7

Spectroscopic Leaf Level Detection of Powdery Mildew for Winter Wheat Using Continuous Wavelet Analysis
下载PDF
导出
摘要 Powdery mildew (Blumeria graminis) is one of the most destructive crop diseases infecting winter wheat plants, and has devastated millions of hectares of farmlands in China. The objective of this study is to detect the disease damage of powdery mildew on leaf level by means of the hyperspectral measurements, particularly using the continuous wavelet analysis. In May 2010, the reflectance spectra and the biochemical properties were measured for 114 leaf samples with various disease severity degrees. A hyperspectral imaging system was also employed for obtaining detailed hyperspectral information of the normal and the pustule areas within one diseased leaf. Based on these spectra data, a continuous wavelet analysis (CWA) was carried out in conjunction with a correlation analysis, which generated a so-called correlation scalogram that summarizes the correlations between disease severity and the wavelet power at different wavelengths and decomposition scales. By using a thresholding approach, seven wavelet features were isolated for developing models in determining disease severity. In addition, 22 conventional spectral features (SFs) were also tested and compared with wavelet features for their efficiency in estimating disease severity. The multivariate linear regression (MLR) analysis and the partial least square regression (PLSR) analysis were adopted as training methods in model mildew on leaf level were found to be closely related with the development. The spectral characteristics of the powdery spectral characteristics of the pustule area and the content of chlorophyll. The wavelet features performed better than the conventional SFs in capturing this spectral change. Moreover, the regression model composed by seven wavelet features outperformed (R2=0.77, relative root mean square error RRMSE=0.28) the model composed by 14 optimal conventional SFs (R2---0.69, RRMSE--0.32) in estimating the disease severity. The PLSR method yielded a higher accuracy than the MLR method. A combination of CWA and PLSR was found to be promising in providing relatively accurate estimates of disease severity of powdery mildew on leaf level. Powdery mildew (Blumeria graminis) is one of the most destructive crop diseases infecting winter wheat plants, and has devastated millions of hectares of farmlands in China. The objective of this study is to detect the disease damage of powdery mildew on leaf level by means of the hyperspectral measurements, particularly using the continuous wavelet analysis. In May 2010, the reflectance spectra and the biochemical properties were measured for 114 leaf samples with various disease severity degrees. A hyperspectral imaging system was also employed for obtaining detailed hyperspectral information of the normal and the pustule areas within one diseased leaf. Based on these spectra data, a continuous wavelet analysis (CWA) was carried out in conjunction with a correlation analysis, which generated a so-called correlation scalogram that summarizes the correlations between disease severity and the wavelet power at different wavelengths and decomposition scales. By using a thresholding approach, seven wavelet features were isolated for developing models in determining disease severity. In addition, 22 conventional spectral features (SFs) were also tested and compared with wavelet features for their efficiency in estimating disease severity. The multivariate linear regression (MLR) analysis and the partial least square regression (PLSR) analysis were adopted as training methods in model mildew on leaf level were found to be closely related with the development. The spectral characteristics of the powdery spectral characteristics of the pustule area and the content of chlorophyll. The wavelet features performed better than the conventional SFs in capturing this spectral change. Moreover, the regression model composed by seven wavelet features outperformed (R2=0.77, relative root mean square error RRMSE=0.28) the model composed by 14 optimal conventional SFs (R2---0.69, RRMSE--0.32) in estimating the disease severity. The PLSR method yielded a higher accuracy than the MLR method. A combination of CWA and PLSR was found to be promising in providing relatively accurate estimates of disease severity of powdery mildew on leaf level.
出处 《Journal of Integrative Agriculture》 SCIE CAS CSCD 2012年第9期1474-1484,共11页 农业科学学报(英文版)
基金 the National Natural Science Foundation of China (41101395, 41071276, 31071324) the Beijing Municipal Natural Science Foundation, China (4122032) the National Basic Research Program of China (2011CB311806)
关键词 powdery mildew disease severity continuous wavelet analysis partial least square regression powdery mildew, disease severity, continuous wavelet analysis, partial least square regression
  • 相关文献

参考文献3

二级参考文献26

  • 1黄文江,黄木易,刘良云,王纪华,赵春江,王锦地.利用高光谱指数进行冬小麦条锈病严重度的反演研究[J].农业工程学报,2005,21(4):97-103. 被引量:26
  • 2李映雪,朱艳,田永超,尤小涛,周冬琴,曹卫星.小麦冠层反射光谱与籽粒蛋白质含量及相关品质指标的定量关系[J].中国农业科学,2005,38(7):1332-1338. 被引量:41
  • 3蔡成静,王海光,安虎,史延春,黄文江,马占鸿.小麦条锈病高光谱遥感监测技术研究[J].西北农林科技大学学报(自然科学版),2005,33(B08):31-36. 被引量:22
  • 4Serrano L, Filella I, Penuelas J. Remote sensing of biomass and yield of winter wheat under different nitrogen supplies. Crop Science, 2000, 40(3) : 723 -731
  • 5Hansen P M, Jorgensen J R, Thomsen A. Predicting grain yield and protein content in winter wheat and spring barley using repeated canopy reflectance measurements and partial least squares regression. Journal of Agricultural Science, 2002, 139 (3) : 307 -318
  • 6Large E C, Doling D A. Effect of mildew on yield of winter wheat. Plant Pathology, 1983, 12(3): 128-130
  • 7Samobor V, Vukobratovic M, Jost M. Effect of powdery mildew attack on quality parameters and experimental bread baking of wheat. Acta Agriculturae Slovenica, 2006, 87(2): 381 -391
  • 8Jordan C F. Derivation of leaf-area index from quality of light on the forest floor. Ecology, 1969, 50(4) : 663 -666
  • 9Gitelson A A, Kaufman Y J, Stark R, et al. Novel algorithms for remote estimation of vegetation fraction. Remote Sensing of Environment, 2002, 80 ( 1 ) : 76 - 87
  • 10Huete A R. A soil-adjusted vegetation index (SAVI). Remote Sensing of Environment, 1988, 25 ( 3 ) : 295 - 309

共引文献39

同被引文献61

引证文献7

二级引证文献55

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部