Please wait a minute...
Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology)  2008, Vol. 9 Issue (5): 378-384    DOI: 10.1631/jzus.B0730019
Plant Sciences     
Quantifying biochemical variables of corn by hyperspectral reflectance at leaf scale
Qiu-xiang YI, Jing-feng HUANG, Fu-min WANG, Xiu-zhen WANG
Institute of Remote Sensing and Information Technology, Zhejiang University, Hangzhou 310029, China; Institute of Zhejiang Meteorology, Hangzhou 310004, China
Download:     PDF (0 KB)     
Export: BibTeX | EndNote (RIS)      

Abstract  To further develop the methods to remotely sense the biochemical content of plant canopies, we report the results of an experiment to estimate the concentrations of three biochemical variables of corn, i.e., nitrogen (N), crude fat (EE) and crude fiber (CF) concentrations, by spectral reflectance and the first derivative reflectance at fresh leaf scale. The correlations between spectral reflectance and the first derivative transformation and three biochemical variables were analyzed, and a set of estimation models were established using curve-fitting analyses. Coefficient of determination (R2), root mean square error (RMSE) and relative error of prediction (REP) of estimation models were calculated for the model quality evaluations, and the possible optimum estimation models of three biochemical variables were proposed, with R2 being 0.891, 0.698 and 0.480 for the estimation models of N, EE and CF concentrations, respectively. The results also indicate that using the first derivative reflectance was better than using raw spectral reflectance for all three biochemical variables estimation, and that the first derivative reflectances at 759 nm, 1954 nm and 2370 nm were most suitable to develop the estimation models of N, EE and CF concentrations, respectively. In addition, the high correlation coefficients of the theoretical and the measured biochemical parameters were obtained, especially for nitrogen (r=0.948).

Key wordsBiochemical variables      Corn      The first derivative spectral reflectance      Spectral reflectance     
Received: 28 September 2007     
CLC:  S1  
Cite this article:

Qiu-xiang YI, Jing-feng HUANG, Fu-min WANG, Xiu-zhen WANG. Quantifying biochemical variables of corn by hyperspectral reflectance at leaf scale. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2008, 9(5): 378-384.

URL:

http://www.zjujournals.com/xueshu/zjus-b/10.1631/jzus.B0730019     OR     http://www.zjujournals.com/xueshu/zjus-b/Y2008/V9/I5/378

[1] Fa-chun Guan, Zhi-peng Sha, Yu-yang Zhang, Jun-feng Wang, Chao Wang. Emergy assessment of three home courtyard agriculture production systems in Tibet Autonomous Region, China[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2016, 17(8): 628-639.
[2] Wei Hu, Jing Liu, Ji-hong Chen, Shu-yang Wang, Dong Lu, Qing-hua Wu, Wen-jian Li. A mutation of Aspergillus niger for hyper-production of citric acid from corn meal hydrolysate in a bioreactor[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2014, 15(11): 1006-1010.
[3] Ya-nan Huo, Yu-feng Yao, Ping Yu. Pathogenic mutations of TGFBI and CHST6 genes in Chinese patients with Avellino, lattice, and macular corneal dystrophies[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2011, 12(9): 687-693.
[4] Ting-jun Fan, Jun Zhao, Xiu-zhong Hu, Xi-ya Ma, Wen-bo Zhang, Chao-zhong Yang. Therapeutic efficiency of tissue-engineered human corneal endothelium transplants on rabbit primary corneal endotheliopathy[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2011, 12(6): 492-498.
[5] Yan Long, Yang-shun Gu, Wei Han, Xiu-yi Li, Ping Yu, Ming Qi. Genotype-phenotype correlations in Chinese patients with TGFBI gene-linked corneal dystrophy[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2011, 12(4): 287-292.
[6] 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.
[7] 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.
[8] 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.
[9] Dong-dong CAO, Jin HU, Xin-xian HUANG, Xian-ju WANG, Ya-jing GUAN, Zhou-fei WANG. Relationships between changes of kernel nutritive components and seed vigor during development stages of F1 seeds of sh2 sweet corn[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2008, 9(12): 964-968.
[10] 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[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2007, 8(10): 738-744.
[11] YANG Yan-min, LIU Xiao-jing, LI Wei-qiang, LI Cun-zhen. Effect of different mulch materials on winter wheat production in desalinized soil in Heilonggang region of North China[J]. Journal of Zhejiang University-SCIENCE B (Biomedicine & Biotechnology), 2006, 7(11): 2-.