Deriving phenology of barley with imaging hyperspectral remote sensing

被引:24
作者
Lausch, Angela [1 ]
Salbach, Christoph [1 ]
Schmidt, Andreas [1 ]
Doktor, Daniel [1 ]
Merbach, Ines [1 ]
Pause, Marion [1 ]
机构
[1] UFZ Helmholtz Ctr Environm Res, Dept Computat Landscape Ecol, D-04318 Leipzig, Germany
关键词
Phenological stage; BBCH barley; Hyperspectral sensor; AISA; Spectral indices; Vegetation characteristics; SPECTRAL REFLECTANCE; CHLOROPHYLL CONTENT; VEGETATION INDEXES; WATER-CONTENT; LEAF-AREA; USE EFFICIENCY; STRESS; SOIL; LAI; FLUORESCENCE;
D O I
10.1016/j.ecolmodel.2014.10.001
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
The aim of this paper was to create a model that predicts the different phenological BBCH macro-stages of barley in laboratory on the plot scale and to transfer the most suitable model to the landscape scale. To characterise the phenology, eight vitality and phenology-related vegetation parameters like leaf area index (LAI), Chl-SPAD content, C-content, N-content, C/N-content, canopy chlorophyll content (CCC), gravimetric water content (GWC) and vegetation height at the same time as all imaging hyperspectral measurements (AISA-EAGLE, 395-973 nm). These biochemical-biophysical vegetation parameters were investigated according to the different phenological macro-stages of barley. The predictive models were developed using four different types of vegetation indices (VI): (I) published VI's, (II) reflectance VI's as well as (III) VI(xy) formula combinations and (IV) a combination of all VI index types using the Library for Support Vector Machines (LibSVM) and tested with a recursive conditional correlation weighting selection algorithm (RCCW) to reduce the number of variables. To increase the performance of the model a 10-fold cross-validation was carried out for all statistical models. The GWC was found to be the most important variable for differentiating between the phenological macro-stages of barley. The most suitable model for predicting the phenological BBCH macro-stages was achieved by a model that combined all three kinds of VI's: published VI's, reflectance VI's and formula combination VI's with a classification accuracy of 84.80%. With the classification model for the reflectance VI's Y = 746 nm and for the VI formula combinations Y = (527 + 612) nm and Y = (540 + 639) nm. The best predictive model was applied to the airborne AISA-EAGLE hyperspectral data to model the phenological macro-stages of barley at the landscape level. The classification error of the best predictive model of 12.80% as well as disturbance factors such as channels and areas with weeds or ruderal vegetation lead to misclassifications of BBCH macro-stages at the landscape level. By using One Sensor At Different Scales-Approach (OSADIS), sensor-specific differences in the model building and model transfer can be eliminated. The approach described in the paper for determining the phenology based on imaging hyperspectral RS data shows that in the process of plant phonological development a number of biochemical-biophysical vegetation traits in vegetation change, which can be thoroughly recorded with hyperspectral remote sensing technology. For this reason, hyperspectral RS constitutes an ideal, cost-effective and comparable approach, with whose help vegetation traits and changes can be quantified, which are key for ecological modelling. (C) 2014 Elsevier B.V. All rights reserved.
引用
收藏
页码:123 / 135
页数:13
相关论文
共 50 条
  • [21] Estimating the crop leaf area index using hyperspectral remote sensing
    Liu Ke
    Zhou Qing-bo
    Wu Wen-bin
    Xia Tian
    Tang Hua-jun
    JOURNAL OF INTEGRATIVE AGRICULTURE, 2016, 15 (02) : 475 - 491
  • [22] Scale-specific Hyperspectral Remote Sensing Approach in Environmental Research
    Lausch, Angela
    Pause, Marion
    Merbach, Ines
    Gwillym-Margianto, Sarah
    Schulz, Karsten
    Zacharias, Steffen
    Seppelt, Ralf
    PHOTOGRAMMETRIE FERNERKUNDUNG GEOINFORMATION, 2012, (05): : 589 - 601
  • [23] In Situ Hyperspectral Remote Sensing for Monitoring of Alpine Trampled and Recultivated Species
    Kycko, Marlena
    Zagajewski, Bogdan
    Lavender, Samantha
    Dabija, Anca
    REMOTE SENSING, 2019, 11 (11)
  • [24] Multispectral and hyperspectral remote sensing for identification and mapping of wetland vegetation: a review
    Adam, Elhadi
    Mutanga, Onisimo
    Rugege, Denis
    WETLANDS ECOLOGY AND MANAGEMENT, 2010, 18 (03) : 281 - 296
  • [25] Prediction of protein content in malting barley using proximal and remote sensing
    Soderstrom, Mats
    Borjesson, Thomas
    Pettersson, Carl-Goran
    Nissen, Knud
    Hagner, Olle
    PRECISION AGRICULTURE, 2010, 11 (06) : 587 - 599
  • [26] Remote exploration and monitoring of geothermal sources: A novel method for foliar element mapping using hyperspectral (VNIR-SWIR) remote sensing
    Rodriguez-Gomez, Cecilia
    Kereszturi, Gabor
    Jeyakumar, Paramsothy
    Pullanagari, Reddy
    Reeves, Robert
    Rae, Andrew
    Procter, Jonathan N.
    GEOTHERMICS, 2023, 111
  • [27] Analysis of Spectral Vegetation Signal Characteristics as a Function of Soil Moisture Conditions Using Hyperspectral Remote Sensing
    Brosinsky, A.
    Lausch, A.
    Doktor, D.
    Salbach, C.
    Merbach, I.
    Gwillym-Margianto, S.
    Pause, M.
    JOURNAL OF THE INDIAN SOCIETY OF REMOTE SENSING, 2014, 42 (02) : 311 - 324
  • [28] Remote Sensing Phenology of the Brazilian Caatinga and Its Environmental Drivers
    Medeiros, Rodolpho
    Andrade, Joao
    Ramos, Desiree
    Moura, Magna
    Perez-Marin, Aldrin Martin
    dos Santos, Carlos A. C.
    da Silva, Bernardo Barbosa
    Cunha, John
    REMOTE SENSING, 2022, 14 (11)
  • [29] Multispectral and hyperspectral image fusion in remote sensing: A survey
    Vivone, Gemine
    INFORMATION FUSION, 2023, 89 : 405 - 417
  • [30] Water quality model using hyperspectral remote sensing
    Lopes, Fernando B.
    Barbosa, Claudio C. F.
    Novo, Evlyn M. L. de M.
    de Andrade, Eunice M.
    Chaves, Luiz C. G.
    REVISTA BRASILEIRA DE ENGENHARIA AGRICOLA E AMBIENTAL, 2014, 18 : S13 - S19