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Rapid Determination of Soil Class Based on Visible-Near Infrared, Mid-Infrared Spectroscopy and Data Fusion

Hanyi Xu, Dongyun Xu, Songchao Chen, Wanzhu Ma, Zhou Shi

2020Remote Sensing45 citationsDOIOpen Access PDF

Abstract

Wise soil management requires detailed soil information, but conventional soil class mapping in a rather coarse spatial resolution cannot meet the demand for precision agriculture. With the advantages of non-destructiveness, rapid cost-efficiency, and labor savings, the spectroscopic technique has proved its high potential for success in soil classification. Previous studies mainly focused on predicting soil classes using a single sensor. In this study, we attempted to compare the predictive ability of visible near infrared (vis-NIR) spectra, mid-infrared (MIR) spectra, and their fused spectra for soil classification. A total of 146 soil profiles were collected from Zhejiang, China, and the soil properties and spectra were measured by their genetic horizons. Along with easy-to-measure auxiliary soil information (soil organic matter, soil texture, color and pH), four spectral data, including vis-NIR, MIR, their simple combination (vis-NIR-MIR), and outer product analysis (OPA) fused spectra, were used for soil classification using a multiple objectives mixed support vector machine model. The independent validation results showed that the classification model using MIR (accuracy of 64.5%) was slightly better than that using vis-NIR (accuracy of 64.2%). The predictive model built on vis-NIR-MIR did not improve the classification accuracy, having the lowest accuracy of 61.1%, which likely resulted from an over-fitting problem. The model based on OPA fused spectra performed best with an accuracy of 68.4%. Our results prove the potential of fusing vis-NIR and MIR using OPA for improving prediction ability for soil classification.

Topics & Concepts

Soil textureSoil testNear-infrared spectroscopyPrecision agricultureSpectroscopySoil scienceEnvironmental scienceSoil waterSupport vector machineRemote sensingSpectral linePattern recognition (psychology)Computer scienceArtificial intelligenceAgricultureGeologyPhysicsOpticsBiologyEcologyQuantum mechanicsAstronomySoil Geostatistics and MappingGeochemistry and Geologic MappingSpectroscopy and Chemometric Analyses