Please wait a minute...
Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology)  2007, Vol. 8 Issue (10): 738-744    DOI: 10.1631/jzus.2007.B0738
Biotechnology     
Characterizing and estimating rice brown spot disease severity using stepwise regression, principal component regression and partial least-square regression
LIU Zhan-yu, HUANG Jing-feng, SHI Jing-jing, TAO Rong-xiang, ZHOU Wan, ZHANG Li-li
Institute of Agriculture Remote Sensing and Information System Application, Zhejiang University, Hangzhou 310029, China; Institute of Plant Protection and Microbiology, Zhejiang Academy of Agricultural Sciences, Hangzhou 310021, China; Plant Inspection Station of Hangzhou City, Hangzhou 310020, China
Download:     PDF (0 KB)     
Export: BibTeX | EndNote (RIS)      

Abstract  Detecting plant health conditions plays a key role in farm pest management and crop protection. In this study, measurement of hyperspectral leaf reflectance in rice crop (Oryzasativa L.) was conducted on groups of healthy and infected leaves by the fungus Bipolaris oryzae (Helminthosporium oryzae Breda. de Hann) through the wavelength range from 350 to 2 500 nm. The percentage of leaf surface lesions was estimated and defined as the disease severity. Statistical methods like multiple stepwise regression, principal component analysis and partial least-square regression were utilized to calculate and estimate the disease severity of rice brown spot at the leaf level. Our results revealed that multiple stepwise linear regressions could efficiently estimate disease severity with three wavebands in seven steps. The root mean square errors (RMSEs) for training (n=210) and testing (n=53) dataset were 6.5% and 5.8%, respectively. Principal component analysis showed that the first principal component could explain approximately 80% of the variance of the original hyperspectral reflectance. The regression model with the first two principal components predicted a disease severity with RMSEs of 16.3% and 13.9% for the training and testing dataset, respectively. Partial least-square regression with seven extracted factors could most effectively predict disease severity compared with other statistical methods with RMSEs of 4.1% and 2.0% for the training and testing dataset, respectively. Our research demonstrates that it is feasible to estimate the disease severity of rice brown spot using hyperspectral reflectance data at the leaf level.

Key wordsHyperspectral reflectance      Rice brown spot      Partial least-square (PLS) regression      Stepwise regression      Principal component regression (PCR)     
Received: 19 June 2007     
CLC:  S127  
  TP79  
Cite this article:

LIU Zhan-yu, HUANG Jing-feng, SHI Jing-jing, TAO Rong-xiang, ZHOU Wan, ZHANG Li-li. Characterizing and estimating rice brown spot disease severity using stepwise regression, principal component regression and partial least-square regression. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2007, 8(10): 738-744.

URL:

http://www.zjujournals.com/xueshu/zjus-b/10.1631/jzus.2007.B0738     OR     http://www.zjujournals.com/xueshu/zjus-b/Y2007/V8/I10/738

[1] Kim-seng Chia, Herlina Abdul Rahim, Ruzairi Abdul Rahim. Neural network and principal component regression in non-destructive soluble solids content assessment: a comparison[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2012, 13(2): 145-151.
[2] Qi-fa Zhou, Zhan-yu Liu, Jing-feng Huang. Detection of nitrogen-overfertilized rice plants with leaf positional difference in hyperspectral vegetation index[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2010, 11(6): 465-470.
[3] Zhan-yu LIU, Jing-jing SHI, Li-wen ZHANG, Jing-feng HUANG. Discrimination of rice panicles by hyperspectral reflectance data based on principal component analysis and support vector classification[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2010, 11(1): 71-78.
[4] Fu-min WANG, Jing-feng HUANG, Qi-fa ZHOU, Xiu-zhen WANG. Optimal waveband identification for estimation of leaf area index of paddy rice[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2008, 9(12): 953-963.