4.7 Review

Satellite Imagery to Map Topsoil Organic Carbon Content over Cultivated Areas: An Overview

期刊

REMOTE SENSING
卷 14, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/rs14122917

关键词

soil organic carbon; spectral models; satellite imagery

资金

  1. European Union [862695]
  2. European Space Agency
  3. CNES, France through the TOSCA program of the CNES [200769/id5126]

向作者/读者索取更多资源

This review paper focuses on the satellite-based spectral approaches for assessing soil organic carbon (SOC) in various geographical contexts. Most studies have been conducted in temperate croplands in Europe, China, and North America, with dry combustion and wet oxidation being the commonly used methods for SOC determination. The findings suggest that satellite-derived SOC spectral models, particularly under bare soil conditions, have the potential for further investigations. However, there is a need for future research on deep learning methods, performance evaluations, and uncertainty analysis of spatial model predictions.
There is a need to update soil maps and monitor soil organic carbon (SOC) in the upper horizons or plough layer for enabling decision support and land management, while complying with several policies, especially those favoring soil carbon storage. This review paper is dedicated to the satellite-based spectral approaches for SOC assessment that have been achieved from several satellite sensors, study scales and geographical contexts in the past decade. Most approaches relying on pure spectral models have been carried out since 2019 and have dealt with temperate croplands in Europe, China and North America at the scale of small regions, of some hundreds of km(2): dry combustion and wet oxidation were the analytical determination methods used for 50% and 35% of the satellite-derived SOC studies, for which measured topsoil SOC contents mainly referred to mineral soils, typically cambisols and luvisols and to a lesser extent, regosols, leptosols, stagnosols and chernozems, with annual cropping systems with a SOC value of similar to 15 g.kg(-1) and a range of 30 g.kg(-1) in median. Most satellite-derived SOC spectral prediction models used limited preprocessing and were based on bare soil pixel retrieval after Normalized Difference Vegetation Index (NDVI) thresholding. About one third of these models used partial least squares regression (PLSR), while another third used random forest (RF), and the remaining included machine learning methods such as support vector machine (SVM). We did not find any studies either on deep learning methods or on all-performance evaluations and uncertainty analysis of spatial model predictions. Nevertheless, the literature examined here identifies satellite-based spectral information, especially derived under bare soil conditions, as an interesting approach that deserves further investigations. Future research includes considering the simultaneous analysis of imagery acquired at several dates i.e., temporal mosaicking, testing the influence of possible disturbing factors and mitigating their effects fusing mixed models incorporating non-spectral ancillary information.

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