Estimating Winter Wheat Leaf Area Index From Ground and Hyperspectral Observations Using Vegetation Indices

文献类型: 外文期刊

第一作者: Xie, Qiaoyun

作者: Xie, Qiaoyun;Huang, Wenjiang;Zhang, Bing;Dong, Yingying;Xie, Qiaoyun;Chen, Pengfei;Song, Xiaoyu;Pascucci, Simone;Pignatti, Stefano;Laneve, Giovanni

作者机构:

关键词: Hyperspectral;leaf area index (LAI);precision agriculture;spectral indices;winter wheat

期刊名称:IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING ( 影响因子:3.784; 五年影响因子:3.734 )

ISSN: 1939-1404

年卷期: 2016 年 9 卷 2 期

页码:

收录情况: SCI

摘要: Growing numbers of studies have focused on evaluating the ability of vegetation indices (VIs) to predict biophysical parameters such as leaf area index (LAI) and chlorophyll. In this study, empirical models were used to estimate winter wheat LAI based on three spectral indices [the normalized difference vegetation index (NDVI), the modified simple ratio index (MSR), and the modified soil-adjusted vegetation index (MSAVI)], and three band-selection approaches (the conventional approach, the red edge approach, and the best correlated approach), which were used to calculate VIs. The aim was to enhance the relationships between the indices and LAI values by improving the band-selection approaches so as to produce a suitable VI for winter wheat LAI estimation. Using hyperspectral airborne data and ground-measured spectra as well as ground LAI measurements collected during two field campaigns, winter wheat LAIs were estimated and validated using different VIs calculated by different band combinations. Our results showed that the MSAVI provided the best LAI estimations when using ground measured spectra with R2 over 0.74 and RMSE less than 0.98. The NDVI provided the most robust estimation results across different sites, years, and sensors, although it was not adequate for LAI estimation of moderately dense canopies due to the saturation that occurred when LAI > 3. The MSR demonstrated more severe scattering and lower predictive accuracy than the NDVI and, therefore, was not a perfect solution to the saturation issue. In addition, it was also shown that the best correlated approach improved the predictive power of the indices and revealed the importance of red edge bands for LAI estimation; meanwhile, the red edge approach (based on the reflectance at 705 and 750 nm) was not always superior to the conventional approach (based on the reflectance at 670 and 800 nm). The results were promising and should facilitate the use of VIs in crop LAI measurements.

分类号:

  • 相关文献

[1]Comparison and Analysis of Data Upscaling Schemes for Predicting Crop Leaf Area Index. Dong, Yingying,Feng, Haikuan,Wang, Jihua,Li, Cunjun,Yang, Guijun,Huang, Wenjiang,Dong, Yingying,Wang, Jihua. 2012

[2]Estimation of leaf chlorophyll content in winter wheat using variable importance for projection (VIP) with hyperspectral data. He, Peng,Xu, Xingang,Li, Zhenhai,Feng, Haikuan,Yang, Guijun,Zhang, Yongfeng,He, Peng,Xu, Xingang,Li, Zhenhai,Feng, Haikuan,Yang, Guijun,Zhang, Yongfeng,He, Peng,He, Peng,Zhang, Baolei. 2015

[3]Evaluation of spectral indices and continuous wavelet analysis to quantify aphid infestation in wheat. Luo, Juhua,Huang, Wenjiang,Yuan, Lin,Zhao, Chunjiang,Zhang, Jingcheng,Zhao, Jinling,Du, Shizhou.

[4]Leaf Area Index Estimation Using Vegetation Indices Derived From Airborne Hyperspectral Images in Winter Wheat. Xie, Qiaoyun,Huang, Wenjiang,Liang, Dong,Huang, Linsheng,Zhang, Dongyan,Chen, Pengfei,Wu, Chaoyang,Yang, Guijun,Zhang, Jingcheng. 2014

[5]Estimation of regional crop yield by assimilating multi-temporal TM images into crop growth model. Yang, Peng,Zhou, Qingbo,Chen, Zhongxin,Zha, Yan,Wu, Wenbin,Shibasaki, Ryosuke. 2006

[6]Comparisons of MODIS LAI products and LAI estimates derived from Landsat TM. Yang, Peng,Chen, Zhongxin,Zhou, Qingbo,Zha, Yan,Wu, Wenbin,Shibasaki, Ryosuke. 2006

[7]Evaluating Multispectral and Hyperspectral Satellite Remote Sensing Data for Estimating Winter Wheat Growth Parameters at Regional Scale in the North China Plain. Koppe, Wolfgang,Gnyp, Martin L.,Bareth, Georg,Koppe, Wolfgang,Chen, Xinping,Zhang, Fusuo,Li, Fei,Miao, Yuxin,Miao, Yuxin. 2010

[8]Development and implementation of a multiscale biomass model using hyperspectral vegetation indices for winter wheat in the North China Plain. Bareth, Georg,Lenz-Wiedemann, Victoria I. S.,Koppe, Wolfgang,Gnyp, Martin L.,Bareth, Georg,Li, Fei,Lenz-Wiedemann, Victoria I. S.,Chen, Xinping,Gnyp, Martin L.,Li, Fei,Miao, Yuxin,Jia, Liangliang,Koppe, Wolfgang,Hennig, Simon D.,Jia, Liangliang,Chen, Xinping,Zhang, Fusuo,Laudien, Rainer. 2014

[9]Research on Universality of Least Squares Support Vector Machine Method for Estimating Leaf Area Index of Winter Wheat. Xie Qiao-yun,Huang Wen-jiang,Peng Dai-liang,Xie Qiao-yun,Liang Dong,Huang Lin-sheng,Zhang Dong-yan,Xie Qiao-yun,Liang Dong,Huang Lin-sheng,Zhang Dong-yan,Song Xiao-yu,Yang Gui-jun. 2014

[10]Assimilation of Two Variables Derived from Hyperspectral Data into the DSSAT-CERES Model for Grain Yield and Quality Estimation. Li, Zhenhai,Xu, Xingang,Zhao, Chunjiang,Yang, Guijun,Feng, Haikuan,Li, Zhenhai,Xu, Xingang,Zhao, Chunjiang,Yang, Guijun,Feng, Haikuan,Li, Zhenhai,Wang, Jihua,Wang, Jihua,Xu, Xingang,Zhao, Chunjiang,Yang, Guijun,Feng, Haikuan,Xu, Xingang,Zhao, Chunjiang,Yang, Guijun,Feng, Haikuan,Jin, Xiuliang. 2015

[11]Estimating wheat yield and quality by coupling the DSSAT-CERES model and proximal remote sensing. Li, Zhenhai,Jin, Xiuliang,Zhao, Chunjiang,Xu, Xingang,Yang, Guijun,Li, Cunjun,Shen, Jiaxiao,Li, Zhenhai,Jin, Xiuliang,Zhao, Chunjiang,Xu, Xingang,Yang, Guijun,Li, Cunjun,Shen, Jiaxiao,Zhao, Chunjiang,Zhao, Chunjiang,Li, Zhenhai,Wang, Jihua,Wang, Jihua,Shen, Jiaxiao.

[12]Estimating severity level of cotton disease based on spcctral indicse of TM image. Chen Bing,Li Shao-Kun,Wang Ke-Ru,Su Yi,Chen Jiang-Lu,Jin Xiu-Liang,Lv Yin-Liang,Diao Wan-Ying,Li Shao-Kun,Wang Ke-Ru,Chen Bing. 2011

[13]Estimating Severity Level of Cotton Infected Verticillium Wilt Based on Spectral Indices of TM Image. Chen, Bing,Wang, Keru,Li, Shaokun,Xiao, Chunhua,Chen, Jianglu,Jin, Xiulinag,Wang, Keru,Li, Shaokun,Chen, Bing.

[14]Using optimal combination method and in situ hyperspectral measurements to estimate leaf nitrogen concentration in barley. Xu, Xin-gang,Zhao, Chun-jiang,Wang, Ji-hua,Zhang, Jing-cheng,Song, Xiao-yu.

[15]INTEGRATION OF MULTI-RESOLUTION DATA FOR CROP LAI ESTIMATION BASED ON CONTINUOUS WAVELET. Dong, Yingying,Wang, Jihua,Li, Cunjun,Yang, Guijun,Xu, Xingang,Zhao, Jinling,Huang, Wenjiang. 2012

[16]Comparison and Analysis of Data Assimilation Algorithms for Predicting the Leaf Area Index of Crop Canopies. Dong, Yingying,Wang, Jihua,Wang, Huifang,Li, Cunjun,Yang, Guijun,Wang, Qian,Liu, Feng,Zhao, Jinling,Huang, Wenjiang,Huang, Wenjiang. 2013

[17]Estimating Wheat Yield in China at the Field and District Scale from the Assimilation of Satellite Data into the Aquacrop and Simple Algorithm for Yield (SAFY) Models. Silvestro, Paolo Cosmo,Casa, Raffaele,Pignatti, Stefano,Pascucci, Simone,Yang, Hao,Li, Zhenhai,Yang, Guijun,Huang, Wenjiang. 2017

[18]Evaluation of MODIS land cover and LAI products in cropland of North China plain using in situ measurements and landsat TM images. Yang, Peng,Shibasaki, Ryosuke,Wu, Wenbin,Zhou, Qingbo,Chen, Zhongxin,Zha, Yan,Shi, Yun,Tang, Huajun. 2007

[19]A New Method for LAI Spatial Scaling based on Gaussian Distribution Theory. Dong, Yingying,Wang, Jihua,Li, Cunjun,Xu, Xingang,Zhao, Jinling,Wang, Huifang,Huang, Wenjiang. 2012

[20]A model with leaf area index and apple size parameters for 2.4 GHz radio propagation in apple orchards. Guo, Xiu-ming,Guo, Xiu-ming,Yang, Xin-ting,Chen, Mei-xiang,Li, Ming,Wang, Yan-an.

作者其他论文 更多>>