实测了不同水肥耦合作用下,大豆冠层高光谱反射率与叶绿素含量数据,并对光谱反射率、微分光谱与叶绿素含量进行了相关分析;采用叶绿素A与叶绿素B诊断波段构建了特定植被指数,对叶绿素A、叶绿素B进行了回归分析;采用小波分析对采集的光谱反射率数据进行了能量系数提取,并以小波能量系数作为自变量进行了单变量与多变量回归分析,对叶绿素含量进行估算。经分析发现,叶绿素A、B与光谱反射率在可见光与近红外波段的相关系数的变化趋势基本一致——在可见光谱波段呈负相关,近红外波段呈正相关,红边处相关系数由负变正。特定色素植被指数可以提高大豆叶绿素估算精度(R2>0.73);小波能量系数回归模型可以进一步提高大豆叶绿素含量的估算水平,以一个特定小波能量系数作为自变量的回归模型,叶绿素A其确定性系数R2为0.76,叶绿素B为0.78;以4变量与9变量回归分析结果表明:叶绿素A实测值与预测值的线性回归确定性系数R2分别大于0.85、0.89;叶绿素B实测值与预测值的线性回归确定性系数R2分别为0.86、0.90。
Abstract
Soybean canopy reflectance data collected with ASD spectroradiometers (350~1050nm) which were cultivated in water-fertilizer coupled control conditions, and chlorophyll-A and chlorophyll-B content data were collected simultaneously. First, correlation between reflectance, derivative reflectance against chl-A and chl-B were analyzed. Secondly, RVI, RARSa and PSSRb regressed against chl-A and chl-B. Finally, wavelet energy coefficients of spectral reflectance were extracted, and then those energy coefficients regress against chl-A, chl-B with different method. It was found that soybean canopy reflectance showed a negative relation with chl-A and chl-B, while it showed a positive relation with chl-A and chl-B in near infrared region. Reflectance derivative has an intimate relation with chl-A and chl-B in blue, green and red edge spectral region, and got maximum correlation coefficient in red edge region. Chlorophyll specified absorption vegetation index have intimate relation with chl-A and chl-B, with regression determination coefficient R2 greater than 0.736. Regression model established with single wavelet energy coefficient obtained and determination coefficient R2 greater than 0.76 and 0.78 for chl-A and chl-B respectively. Step wise regression with 4 and 9 wavelet energy coefficients were also done, the result showed that the relation between regression model, with 4 and 9 independents, predicted chl-A and measured chl-A with a determination coefficient R2 of 0.85 and 0.89 respectively, however, for chl-B, the model predicted chl-B and measured chl-B with a determination coefficient R2 of 0.86 and 0.90 respectively. By above analysis, it indicated that wavelet transform can be applied to in-situ collected hyperspectral data processing and model establishing with quite accurate model prediction, and in the future, wavelet transform still should be applied to hyperspectral data for other vegetation biophysical and biochemical parameters inversion.
关键词
高光谱,大豆冠层,叶绿素含量,植被指数,小波能量系数
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Key words
Hyperspectral;Soybean canopy;Chlorophyll content;Vegetation index;Wavelet energy coefficient.
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参考文献
1Lichtenthaler H K. The stress concept in plants: An introduction. Annals of the New York Academy of Science, 1998, ((851):187~198
2Niinemets U, Tenhunen J D. A model separating leaf structural and physiological effects on carbon gain along light gradients for the shade-tolerant species Acer saccharum. Plant, Cell and Environment, 1997,(20):845~866
3Blackburn G A. Spectral indices for estimating photosynthetic pigment concentrations: A test using senescent tree leaves. International Journal of Remote Sensing, 1998,19(4):657~675
4Daughtry C T, Walthal C L, et al. Estimating Corn Leaf Chlorophyll Concentrationfrom Leaf and Canopy Reflectance. Remote Sensing of Environment, 2000, 74:229~239
5Haboudanea D, Miller J R, Pattey E, Zarco-Tejadad P J. Hyperspectral vegetation indices and novel algorithms for predicting green LAI of crop canopies: Modeling and validation in thecontext of precision agriculture. Remote Sensing of Environment, 2004,90(1):337~352
6Markwell J, Osterman J, and Mitchell J L. Calibration of the Minolta SPAD-502 leaf chlorophyll meter. Photosynthesis Research, 1995,(46):467~472
7Jiminez, L., Landgrebe, D. Hyperspctral data analysis and supervised feature reduction via project pur4suit. IEEE Trans on Geoscience and Remote Sensing, 1999,(37):2653~2667
8Lori Mann Bruce, Cliff H. Koger, Jiang Li. Dimensionality reduction of hyperspectral data using discrete transform feature extraction. IEEE Transactoins on Geoscience and Remote Sensing, 2002,40(10):2331~2338
9L. Bruce and J.Li. Wavelet for computationally efficient hyperspectral derivative analysis. IEEE Transactoins on Geoscience and Remote Sensing, 2001,39(7): 1540~1546
10Ruiliang Pu, Peng Gong. Wavelet transform applied to EO-1 hyperspectral data for forest LAI and crown closure mapping. Remote Sensing of Environment, 2004, (91):212~224
11Adams M L, Norvell W A, Peverly J H, Philpot W D. Fluorescence and reflectance characteristics of manganese deficient soybean leaves: Effects of leaf age and choice of leaflet. Plant Soil, 1993,(155/156):235~238
12Milton N M, Ager C M, Eiswerth B A, Power M S. Arsenic- and Selenium-induced changes in spectral reflectance and morphology of soybean plants. Remote Sens. Environ, 1989,30(3):263~269
13Wang D, Wilson C, Shannon M. Interpretation of salinity and irrigation effects on soybean canopy reflectance in visible and near-infrared spectrum domain. International Journal of Remote Sensing, 2002,23(5):811~824
14王秀珍,黄敬峰,等.高光谱数据与水稻农学参数之间的相关分析[J].浙江大学学报(农业与生命科学版),2002,28(3):283~288
15赵春江,黄文江,等.不同品种、肥水条件下冬小麦光谱红边参数研究[J].中国农业科学,2002,35(8):980~987
16黄文江,王纪华,刘良云,等.小麦品质指标与冠层光谱特征的相关性的初步研究[J].农业工程学报,2004, 20(4):203~207
17宋开山,张柏,李方,等.高光谱反射率与大豆叶面积及地上生物量的相关分析[J].农业工程学报,2005,21(1):36~40
18段正兴.小波分析算法与应用[M].西安:西安交通大学出版社,1998.72
19Chappelle E W, Moon S, KimJames E, McMurtrey III. Ratio analysis of reflectance spectra (RARS): An algorithm for the remote estimation of the concentrations of chlorophyll A, chlorophyll B, and carotenoids in soybean leaves. Remote Sensing of Environment, 1992,39(3):239~247
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