Development of a Pre-Automatized Processing Chain for Agricultural Monitoring Using a Multi-Sensor and Multi-Temporal Approach

Author:

Valentini Emiliana1,Sapio Serena2ORCID,Schiavon Emma2,Righini Margherita2ORCID,Monteleone Beatrice2,Taramelli Andrea23ORCID

Affiliation:

1. Institute of Polar Sciences of the National Research Council of Italy (ISP CNR), Montelibretti, 00015 Rome, Italy

2. Institute for Advanced Studies of Pavia (IUSS), 27100 Pavia, Italy

3. Institute for Environmental Protection and Research (ISPRA), 00144 Rome, Italy

Abstract

Understanding crop types and their annual cycles is key to managing natural resources, especially when the pressures on these resources are attributable to climate change and social, environmental, and economic policies. In recent years, the space sector’s development, with programs such as Copernicus, has enabled a greater availability of satellite data. This study uses a multi-sensor approach to retrieve crop information by developing a Proof of Concept for the integration of high-resolution SAR imagery and optical data. The main goal is to develop a pre-automatized processing chain that explores the temporal dimension of different crop. Results are related to the advantage of using a multi-sensor approach to retrieve vegetation biomass and vertical structure for the identification of phenological stages and different crops. The novelty consists of investigating the multi-temporal pattern of radiometric indices and radar backscatter to detect the different phenological stages of each crop, identifying the Day of the Year (DoY) in which the classes showed greater separability. The current study could be considered a benchmark for the exploitation of future multi-sensor missions in downstream services for the agricultural sector, strengthening the evolution of Copernicus services.

Publisher

MDPI AG

Subject

Nature and Landscape Conservation,Ecology,Global and Planetary Change

Reference44 articles.

1. Research Progress in Agricultural Vulnerability to Climate Change;Tao;Adv. Clim. Change Res.,2011

2. Monteleone, B., Borzí, I., Bonaccorso, B., and Martina, M. (2023). Quantifying Crop Vulnerability to Weather-Related Extreme Events and Climate Change through Vulnerability Curves, Springer.

3. (2021, October 07). European Commission Commissions Staff Working Document: Analysis of Links between CAP Reform and Green Deal. Available online: https://agriculture.ec.europa.eu/news/cap-reforms-compatibility-green-deals-ambition-2020-05-20_en.

4. (2020). European Court of Auditors Special Report 04/2020: Using New Imaging Technologies to Monitor the Common Agricultural Policy: Steady Progress Overall, but Slower for Climate and Environment Monitoring, Publications Office of the European Union.

5. Fontanelli, G., Crema, A., Azar, R., Stroppiana, D., Villa, P., and Boschetti, M. (2014, January 13–18). Agricultural Crop Mapping Using Optical and SAR Multi-Temporal Seasonal Data: A Case Study in Lombardy Region, Italy. Proceedings of the International Geoscience and Remote Sensing Symposium (IGARSS), Québec City, QC, Canada.

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