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Remote Sensing Data for Digital Soil Mapping in French Research—A Review

Authors :
Richer-de-Forges, Anne C.
Chen, Qianqian
Baghdadi, Nicolas
Chen, Songchao
Gomez, Cécile
Jacquemoud, Stéphane
Martelet, Guillaume
Mulder, Vera L.
Urbina-Salazar, Diego
Vaudour, Emmanuelle
Weiss, Marie
Wigneron, Jean Pierre
Arrouays, Dominique
Richer-de-Forges, Anne C.
Chen, Qianqian
Baghdadi, Nicolas
Chen, Songchao
Gomez, Cécile
Jacquemoud, Stéphane
Martelet, Guillaume
Mulder, Vera L.
Urbina-Salazar, Diego
Vaudour, Emmanuelle
Weiss, Marie
Wigneron, Jean Pierre
Arrouays, Dominique
Source :
ISSN: 2072-4292
Publication Year :
2023

Abstract

Soils are at the crossroads of many existential issues that humanity is currently facing. Soils are a finite resource that is under threat, mainly due to human pressure. There is an urgent need to map and monitor them at field, regional, and global scales in order to improve their management and prevent their degradation. This remains a challenge due to the high and often complex spatial variability inherent to soils. Over the last four decades, major research efforts in the field of pedometrics have led to the development of methods allowing to capture the complex nature of soils. As a result, digital soil mapping (DSM) approaches have been developed for quantifying soils in space and time. DSM and monitoring have become operational thanks to the harmonization of soil databases, advances in spatial modeling and machine learning, and the increasing availability of spatiotemporal covariates, including the exponential increase in freely available remote sensing (RS) data. The latter boosted research in DSM, allowing the mapping of soils at high resolution and assessing the changes through time. We present a review of the main contributions and developments of French (inter)national research, which has a long history in both RS and DSM. Thanks to the French SPOT satellite constellation that started in the early 1980s, the French RS and soil research communities have pioneered DSM using remote sensing. This review describes the data, tools, and methods using RS imagery to support the spatial predictions of a wide range of soil properties and discusses their pros and cons. The review demonstrates that RS data are frequently used in soil mapping (i) by considering them as a substitute for analytical measurements, or (ii) by considering them as covariates related to the controlling factors of soil formation and evolution. It further highlights the great potential of RS imagery to improve DSM, and provides an overview of the main challenges and prospects related to digital

Details

Database :
OAIster
Journal :
ISSN: 2072-4292
Notes :
application/pdf, Remote Sensing 15 (2023) 12, ISSN: 2072-4292, ISSN: 2072-4292, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1430716774
Document Type :
Electronic Resource