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Title: Rapid determination of soil classes in soil profiles using vis–NIR spectroscopy and multiple objectives mixed support vector classification

Journal Article · · European Journal of Soil Science
DOI: https://doi.org/10.1111/ejss.12715 · OSTI ID:1473716
ORCiD logo [1]; ORCiD logo [2];  [3];  [4];  [2];  [5];  [6]
  1. Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University Hangzhou China, INRA, Unité InfoSol Orléans France, SAS, INRA, Agrocampus Ouest Rennes France
  2. Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University Hangzhou China
  3. Key Laboratory of Information Traceability for Agricultural Products Ministry of Agriculture of China Hangzhou China
  4. Department of Soil and Environment Swedish University of Agricultural Sciences Skara Sweden
  5. Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University Hangzhou China, State Key Laboratory of Soil and Sustainable Agriculture Institute of Soil Science, Chinese Academy of Sciences Nanjing China
  6. State Key Laboratory of Soil and Sustainable Agriculture Institute of Soil Science, Chinese Academy of Sciences Nanjing China

Summary Visible‐near infrared (vis–NIR) spectroscopy can reveal various soil properties and facilitate soil classification. However, few studies have attempted to classify vertical soil profiles that contain several genetic horizons. Here, we propose the ‘multiple objectives mixed support vector classification’ (MOM–SVC) method to classify soil profiles. A total of 130 soil profiles were collected from genetic horizons in Zhejiang Province, China. After laboratory analysis, soil profiles were classified according to the Chinese Soil Taxonomy system. Vis–NIR spectra were recorded from each genetic horizon of each soil profile and were then pre‐processed. We performed the MOM–SVC method as follows: (i) created a support vector machine (SVM) model (one‐versus‐one approach) using spectral data from all soil horizons in calibration profiles, (ii) applied the SVM model on each horizon of the profile to be predicted, (iii) extracted ‘votes’ from each horizon and mixed (or summarized) them into the votes of each profile to be predicted and (iv) classified each profile by the majority‐voting method. We also investigated whether the additional input of auxiliary soil information (e.g. moist soil colour, soil organic matter and soil texture), which could be measured easily or be well predicted by vis–NIR spectroscopy, could improve the accuracy of soil classification when combined with it. Independent validation results showed that the MOM–SVC method performed better at the soil order level than at the suborder level. Adding auxiliary soil information to the classification model improved the overall accuracy of classification at the soil order level. The proposed MOM–SVC method provides a fast objective diagnostic of soil classes for use in soil surveys and can help to update soil databases when a more objective soil classification system is developed. Highlights The MOM–SVC method can be used to classify soil profiles objectively with a variety of soil horizons. Stratified random sampling was used to quantify prediction uncertainty in classification MOM–SVC can predict soil orders with greater accuracy than suborders. Adding auxiliary soil information into the classification model improved prediction accuracy.

Sponsoring Organization:
USDOE
OSTI ID:
1473716
Journal Information:
European Journal of Soil Science, Journal Name: European Journal of Soil Science Journal Issue: 1 Vol. 70; ISSN 1351-0754
Publisher:
Wiley-BlackwellCopyright Statement
Country of Publication:
United Kingdom
Language:
English

References (32)

The Nature of Statistical Learning Theory book January 1995
Development of a national VNIR soil-spectral library for soil classification and prediction of organic matter concentrations journal February 2014
An overview of pedometric techniques for use in soil survey journal September 2000
Cross-Reference Benchmarks for Translating the Genetic Soil Classification of China into the Chinese Soil Taxonomy journal April 2006
Classification of Brazilian soils by using LIBS and variable selection in the wavelet domain journal May 2009
Soil sensing: A new paradigm for agriculture journal October 2016
How well can VNIR spectroscopy distinguish soil classes? journal December 2016
Algorithms for quantitative pedology: A toolkit for soil scientists journal March 2013
Updating a national soil classification with spectroscopic predictions and digital soil mapping journal May 2018
Assessment of important soil properties related to Chinese Soil Taxonomy based on vis–NIR reflectance spectroscopy journal January 2018
A global spectral library to characterize the world's soil journal April 2016
Visible, near infrared, mid infrared or combined diffuse reflectance spectroscopy for simultaneous assessment of various soil properties journal March 2006
Colour space models for soil science journal August 2006
Soil type classification and estimation of soil properties using support vector machines journal January 2010
Soil classification using visible/near-infrared diffuse reflectance spectra from multiple depths journal July 2014
Comparing data mining and deterministic pedology to assess the frequency of WRB reference soil groups in the legend of small scale maps journal January 2015
Machine learning for predicting soil classes in three semi-arid landscapes journal February 2015
An overview and comparison of machine-learning techniques for classification purposes in digital soil mapping journal March 2016
Digital soil mapping at local scale using a multi-depth Vis–NIR spectral library and terrain attributes journal July 2016
Fine resolution map of top- and subsoil carbon sequestration potential in France journal July 2018
On-line measurement of some selected soil properties using a VIS–NIR sensor journal March 2007
Prediction of soil attributes using the Chinese soil spectral library and standardized spectra recorded at field conditions journal January 2016
Increasing organic stocks in agricultural soils: Knowledge gaps and potential innovations journal May 2019
Smoothing and Differentiation of Data by Simplified Least Squares Procedures. journal July 1964
Novel Proximal Sensing for Monitoring Soil Organic C Stocks and Condition journal April 2017
In Situ Measurements of Organic Carbon in Soil Profiles Using vis-NIR Spectroscopy on the Qinghai–Tibet Plateau journal April 2015
Organic carbon prediction in soil cores using VNIR and MIR techniques in an alpine landscape journal May 2017
Estimating spatially downscaled rainfall by regression kriging using TRMM precipitation and elevation in Zhejiang Province, southeast China journal November 2014
Near-Infrared Reflectance Spectroscopic Analysis of soil c and n journal January 2002
Accounting for the effects of water and the environment on proximally sensed vis-NIR soil spectra and their calibrations: Accounting for the effects of water on field soil spectra journal March 2015
Discrimination of Australian soil horizons and classes from their visible-near infrared spectra journal May 2011
Storage and sequestration potential of topsoil organic carbon in China's paddy soils journal January 2004