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Development of land use mapping methods based on multi-sensor data and machine learning algorithms

Grant number: 24/05205-4
Support Opportunities:Scholarships in Brazil - Post-Doctoral
Start date: June 01, 2024
End date: April 30, 2027
Field of knowledge:Physical Sciences and Mathematics - Geosciences
Agreement: MCTI/MC
Principal Investigator:Édson Luis Bolfe
Grantee:Danielle Elis Garcia Furuya
Host Institution: Embrapa Agricultura Digital. Empresa Brasileira de Pesquisa Agropecuária (EMBRAPA). Campinas , SP, Brazil
Associated research grant:22/09319-9 - Center of Science for Development in Digital Agriculture - CCD-AD/SemeAr, AP.CCD

Abstract

Different agricultural mapping initiatives have been carried out to support rural planning and crop prediction. However, due to the complex dynamics and scale of Brazilian agriculture, there is a need to generate methodologies with greater detail, frequency and precision to discriminate between agricultural crops, pastures and forestry. The increase in spatial, temporal and spectral resolution of available satellite images, the high computational capacity for processing large volumes of data, and the development of artificial intelligence associated with classifiers based on machine learning algorithms, enhance research in agricultural remote sensing control for classification, monitoring and agricultural management. However, generating more effective and accurate multi-sensor agricultural mapping still presents a major challenge, due to: i) the level of preprocessing required in different images and its relationship with the integrity and homogeneity of agricultural targets; ii) the complexity of combining different temporal and spatial resolutions, which allows daily analyzes of less than 0.5 meters; iii) due to the difficulty in generating multi-sensor analyzes that enhance digital classification methods via machine learning. With the implementation of this post-doctoral scholarship, the objective is to develop agricultural mapping methods based on machine learning algorithms and a multi-sensor approach with images from satellites, nanosatellites and UAVs in the regions of the Agrotechnological Districts (DAT's) defined by the Center. Among the results, it is expected to generate new methodologies applied to agricultural monitoring, qualified scientific publications, and promote postgraduate professional training. (AU)

News published in Agência FAPESP Newsletter about the scholarship:
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Scientific publications (4)
(References retrieved automatically from Web of Science and SciELO through information on FAPESP grants and their corresponding numbers as mentioned in the publications by the authors)
GARCIA FURUYA, DANIELLE ELIS; BOLFE, EDSON LUIS; PARREIRAS, TAYA CRISTO; ARNAL BARBEDO, JAYME GARCIA; SANTOS, THIAGO TEIXEIRA; GEBLER, LUCIANO. Combination of Remote Sensing and Artificial Intelligence in Fruit Growing: Progress, Challenges, and Potential Applications. REMOTE SENSING, v. 16, n. 24, p. 29-pg., . (24/05205-4, 24/13150-5, 22/09319-9)
PARREIRAS, TAYA CRISTO; SANTOS, CLAUDINEI DE OLIVEIRA; BOLFE, EDSON LUIS; SANO, EDSON EYJI; LEANDRO, VICTORIA BEATRIZ SOARES; BAYMA, GUSTAVO; SILVA, LUCAS AUGUSTO PEREIRA DA; FURUYA, DANIELLE ELIS GARCIA; ROMANI, LUCIANA ALVIM SANTOS; MORTON, DOUGLAS. Dense Time Series of Harmonized Landsat Sentinel-2 and Ensemble Machine Learning to Map Coffee Production Stages. REMOTE SENSING, v. 17, n. 18, p. 29-pg., . (24/05205-4, 23/04008-8, 25/01750-0, 22/09319-9, 24/13150-5)
SOARES, VICTORIA BEATRIZ; PARREIRAS, TAYA CRISTO; FURUYA, DANIELLE ELIS GARCIA; BOLFE, EDSON LUIS; NECHET, KATIA DE LIMA. Mapping Banana and Peach Palm in Diversified Landscapes in the Brazilian Atlantic Forest with Sentinel-2. AGRICULTURE-BASEL, v. 15, n. 19, p. 19-pg., . (25/01750-0, 22/09319-9, 24/13150-5, 24/05205-4)
FURUYA, DANIELLE ELIS GARCIA; BOLFE, EDSON LUIS; DA SILVEIRA, FRANCO; BARBEDO, JAYME GARCIA ARNAL; DA SILVA, TAMIRES LIMA; ROMANI, LUCIANA ALVIM SANTOS; CASTANHEIRO, LETICIA FERRARI; GEBLER, LUCIANO. Hail Netting in Apple Orchards: Current Knowledge, Research Gaps, and Perspectives for Digital Agriculture. CLIMATE, v. 13, n. 10, p. 24-pg., . (24/05205-4, 22/09319-9, 24/10569-5, 25/05985-2, 23/12215-3)