Optimal spectral wavelengths for discriminating orchard species using multivariate statistical techniques

被引:0
|
作者
Abbasi M. [1 ]
Verrelst J. [2 ]
Mirzaei M. [3 ]
Marofi S. [4 ]
Bakhtiari H.R.R. [1 ]
机构
[1] Faculty of Natural Resource and Earth Science, Shahrekord University, Shahrekord
[2] Image Processing Laboratory (IPL), Parc Científic, Universitat de Valencia, Paterna, Valencia
[3] Environmental Pollutions, Grape Environmental Science Department, Research Institute for Grapes and Raisin (RIGR), Malayer University, Malayer
[4] Grape Environmental Science Department, Research Institute for Grapes and Raisin (RIGR)
[5] Water Science Engineering Department, Bu-Ali Sina University, Hamedan
来源
Abbasi, Mozhgan (mozhgan.abbasi@sku.ac.ir) | 1600年 / MDPI AG卷 / 12期
基金
欧洲研究理事会; 欧盟地平线“2020”;
关键词
ANOVA-RFC-PCA; Discriminant analysis; Field spectroscopy; Optimal spectral wavelengths; Orchards species; PLS;
D O I
10.3390/RS12010063
中图分类号
学科分类号
摘要
Sustainable management of orchard fields requires detailed information about the tree types, which is a main component of precision agriculture programs. To this end, hyperspectral imagery can play a major role in orchard tree species mapping. Efficient use of hyperspectral data in combination with field measurements requires the development of optimized band selection strategies to separate tree species. In this study, field spectroscopy (350 to 2500 nm) was performed through scanning 165 spectral leaf samples of dominant orchard tree species (almond, walnut, and grape) in Chaharmahal va Bakhtiyari province, Iran. Two multivariable methods were employed to identify the optimum wavelengths: the first includes three-step approach ANOVA, random forest classifier (RFC) and principal component analysis (PCA), and the second employs partial least squares (PLS). For both methods we determined whether tree species can be spectrally separated using discriminant analysis (DA) and then the optimal wavelengths were identified for this purpose. Results indicate that all species express distinct spectral behaviors at the beginning of the visible range (from 350 to 439 nm), the red edge and the near infrared wavelengths (from 701 to 1405 nm). The ANOVA test was able to reduce primary wavelengths (2151) to 792, which had a significant difference (99% confidence level), then the RFC further reduced the wavelengths to 118. By removing the overlapping wavelengths, the PCA represented five components (99.87% of variance) which extracted optimal wavelengths were: 363,423, 721, 1064, and 1388 nm. The optimal wavelengths for the species discrimination using the best PLS-DA model (100% accuracy) were at 397, 515, 647,1386, and 1919 nm. © 2019 by the authors.
引用
收藏
相关论文
共 50 条
  • [1] Optimal Spectral Wavelengths for Discriminating Orchard Species Using Multivariate Statistical Techniques
    Abbasi, Mozhgan
    Verrelst, Jochem
    Mirzaei, Mohsen
    Marofi, Safar
    Bakhtiari, Hamid Reza Riyahi
    REMOTE SENSING, 2020, 12 (01)
  • [2] Discriminating sources of chemical elements in urban street dust using multivariate statistical techniques and lead isotopic analysis
    Wang, Xue Song
    ENVIRONMENTAL EARTH SCIENCES, 2016, 75 (07)
  • [3] Discriminating sources of chemical elements in urban street dust using multivariate statistical techniques and lead isotopic analysis
    Xue Song Wang
    Environmental Earth Sciences, 2016, 75
  • [4] Multivariate statistical techniques for prediction of tree and shrub species plantation using soil parameters
    Kulkarni G.E.
    Muley A.A.
    Deshmukh N.K.
    Bhalchandra P.U.
    Modeling Earth Systems and Environment, 2018, 4 (1) : 281 - 294
  • [5] CLASSIFICATION OF ACANTHOCYCLUS USING STATISTICAL MULTIVARIATE TECHNIQUES
    JARA, C
    VEGA, R
    ARCHIVOS DE BIOLOGIA Y MEDICINA EXPERIMENTALES, 1982, 15 (02): : R133 - R133
  • [6] CLIMATIC CLASSIFICATION FOR QUEENSLAND USING MULTIVARIATE STATISTICAL TECHNIQUES
    PUVANESWARAN, M
    INTERNATIONAL JOURNAL OF CLIMATOLOGY, 1990, 10 (06) : 591 - 608
  • [7] Classification of textile fabrics using statistical multivariate techniques
    Kiruthika, C.
    Chandrasekaran, R.
    JOURNAL OF APPLIED STATISTICS, 2012, 39 (05) : 1129 - 1138
  • [8] Fault detection and diagnosis using multivariate statistical techniques
    Zhang, J
    Martin, EB
    Morris, AJ
    CHEMICAL ENGINEERING RESEARCH & DESIGN, 1996, 74 (A1): : 89 - 96
  • [9] INTERPRETATION OF GROUNDWATER CHEMISTRY DATA USING MULTIVARIATE STATISTICAL TECHNIQUES
    Rehman, F.
    Cheema, T.
    Abuelnaga, H. S. O.
    Harbi, H. M.
    Atef, A. H.
    Lisa, M.
    GLOBAL NEST JOURNAL, 2016, 18 (03): : 665 - 673
  • [10] Characterisation of Alpine lake sediments using multivariate statistical techniques
    Comero, Sara
    Locoro, Giovanni
    Free, Gary
    Vaccaro, Stefano
    De Capitani, Luisa
    Gawlik, Bernd Manfred
    CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2011, 107 (01) : 24 - 30