Mapping of Clay Montmorillonite Abundance in Agricultural Fields Using Unmixing Methods at Centimeter Scale Hyperspectral Images

Author:

Ducasse Etienne1,Adeline Karine1ORCID,Hohmann Audrey2,Achard Véronique1ORCID,Bourguignon Anne2,Grandjean Gilles2ORCID,Briottet Xavier1ORCID

Affiliation:

1. ONERA/DOTA, Université de Toulouse, F-31055 Toulouse, France

2. BRGM, Risk Division, 3 Avenue Claude Guillemin, CEDEX 02, F-45060 Orléans, France

Abstract

The composition of clay minerals in soils, and more particularly the presence of montmorillonite (as part of the smectite family), is a key factor in soil swell–shrinking as well as off–road vehicle mobility. Detecting these topsoil clay minerals and quantifying the montmorillonite abundance are a challenge since they are usually intimately mixed with other minerals, soil organic carbon and soil moisture content. Imaging spectroscopy coupled with unmixing methods can address these issues, but the quality of the estimation degrades the coarser the spatial resolution is due to pixel heterogeneity. With the advent of UAV-borne and proximal hyperspectral acquisitions, it is now possible to acquire images at a centimeter scale. Thus, the objective of this paper is to evaluate the accuracy and limitations of unmixing methods to retrieve montmorillonite abundance from very-high-resolution hyperspectral images (1.5 cm) acquired from a camera installed on top of a bucket truck over three different agricultural fields, in Loiret department, France. Two automatic endmember detection methods based on the assumption that materials are linearly mixed, namely the Simplex Identification via Split Augmented Lagrangian (SISAL) and the Minimum Volume Constrained Non-negative Matrix Factorization (MVC-NMF), were tested prior to unmixing. Then, two linear unmixing methods, the fully constrained least square method (FCLS) and the multiple endmember spectral mixture analysis (MESMA), and two nonlinear unmixing ones, the generalized bilinear method (GBM) and the multi-linear model (MLM), were performed on the images. In addition, several spectral preprocessings coupled with these unmixing methods were applied in order to improve the performances. Results showed that our selected automatic endmember detection methods were not suitable in this context. However, unmixing methods with endmembers taken from available spectral libraries performed successfully. The nonlinear method, MLM, without prior spectral preprocessing or with the application of the first Savitzky–Golay derivative, gave the best accuracies for montmorillonite abundance estimation using the USGS library (RMSE between 2.2–13.3% and 1.4–19.7%). Furthermore, a significant impact on the abundance estimations at this scale was in majority due to (i) the high variability of the soil composition, (ii) the soil roughness inducing large variations of the illumination conditions and multiple surface scatterings and (iii) multiple volume scatterings coming from the intimate mixture. Finally, these results offer a new opportunity for mapping expansive soils from imaging spectroscopy at very high spatial resolution.

Funder

French Government Defense procurement and technology agency

French geological survey

French Aerospace Lab

Publisher

MDPI AG

Reference101 articles.

1. Ministère de la Transition éCologique ET Solidaire, C. (2024, August 17). Général AU Développement Durable Retrait-Gonflement Des Sols Argileux: Plus de 4 Millions de Maisons Potentiellement Très Exposées. Available online: https://www.notre-environnement.gouv.fr/themes/risques/les-mouvements-de-terrain-et-les-erosions-cotieres-ressources/article/retrait-gonflement-des-sols-argileux-plus-de-4-millions-de-maisons.

2. The Behaviour of Lightly Loaded Piles in Swelling Ground and Implications for Their Design;Crilly;Proc. Inst. Civ. Eng.-Geotech. Eng.,2000

3. Nelson, J., and Miller, D.J. (1997). Expansive Soils: Problems and Practice in Foundation and Pavement Engineering, John Wiley & Sons.

4. Shrink-Swell Index Database for Melbourne;Li;Aust. Geomech. J.,2016

5. Review of XRD-Based Quantitative Analyses of Clay Minerals in Soils: The Suitability of Mineral Intensity Factors;Kahle;Geoderma,2002

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