Mapping Integrated Crop–Livestock Systems Using Fused Sentinel-2 and PlanetScope Time Series and Deep Learning

Author:

Werner João P. S.1ORCID,Belgiu Mariana2ORCID,Bueno Inacio T.13ORCID,Dos Reis Aliny A.13ORCID,Toro Ana P. S. G. D.1,Antunes João F. G.4ORCID,Stein Alfred2ORCID,Lamparelli Rubens A. C.13ORCID,Magalhães Paulo S. G.3ORCID,Coutinho Alexandre C.4ORCID,Esquerdo Júlio C. D. M.14ORCID,Figueiredo Gleyce K. D. A.1ORCID

Affiliation:

1. School of Agricultural Engineering (FEAGRI), University of Campinas, Campinas 13083-875, Brazil

2. Faculty of Geo-Information Science and Earth Observation (ITC), University of Twente, 7500 AE Enschede, The Netherlands

3. Interdisciplinary Center of Energy Planning, University of Campinas, Campinas 13083-896, Brazil

4. Embrapa Digital Agriculture, Brazilian Agricultural Research Corporation, Campinas 13083-886, Brazil

Abstract

Integrated crop–livestock systems (ICLS) are among the main viable strategies for sustainable agricultural production. Mapping these systems is crucial for monitoring land use changes in Brazil, playing a significant role in promoting sustainable agricultural production. Due to the highly dynamic nature of ICLS management, mapping them is a challenging task. The main objective of this research was to develop a method for mapping ICLS using deep learning algorithms applied on Satellite Image Time Series (SITS) data cubes, which consist of Sentinel-2 (S2) and PlanetScope (PS) satellite images, as well as data fused (DF) from both sensors. This study focused on two Brazilian states with varying landscapes and field sizes. Targeting ICLS, field data were combined with S2 and PS data to build land use and land cover classification models for three sequential agricultural years (2018/2019, 2019/2020, and 2020/2021). We tested three experimental settings to assess the classification performance using S2, PS, and DF data cubes. The test classification algorithms included Random Forest (RF), Temporal Convolutional Neural Network (TempCNN), Residual Network (ResNet), and a Lightweight Temporal Attention Encoder (L-TAE), with the latter incorporating an attention-based model, fusing S2 and PS within the temporal encoders. Experimental results did not show statistically significant differences between the three data sources for both study areas. Nevertheless, the TempCNN outperformed the other classifiers with an overall accuracy above 90% and an F1-Score of 86.6% for the ICLS class. By selecting the best models, we generated annual ICLS maps, including their surrounding landscapes. This study demonstrated the potential of deep learning algorithms and SITS to successfully map dynamic agricultural systems.

Publisher

MDPI AG

Reference57 articles.

1. Perceptions of Integrated Crop-Livestock Systems for Sustainable Intensification in the Brazilian Amazon;Cortner;Land Use Policy,2019

2. United Nations (2023, February 07). Transforming Our World: The 2030 Agenda for Sustainable Development. Available online: https://www.un.org/sustainabledevelopment/news/communications-material/.

3. Role of Integrated Crop-Livestock Systems in Improving Agriculture Production and Addressing Food Security—A Review;Sekaran;J. Agric. Food Res.,2021

4. Integrated Crop and Livestock Systems Increase Both Climate Change Adaptation and Mitigation Capacities;Delandmeter;Sci. Total Environ.,2024

5. Crop-Livestock-Forestry Systems as a Strategy for Mitigating Greenhouse Gas Emissions and Enhancing the Sustainability of Forage-Based Livestock Systems in the Amazon Biome;Monteiro;Sci. Total Environ.,2024

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