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Field crop mapping using machine learning and multi-sensor satellite fusion: toward dynamic agricultural monitoring

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Monitoring crop dynamics with precision is vital for food security and sustainable agricultural management. Yet, conventional monitoring approaches often lack sufficient spatial resolution, revisit frequency, and scalability, particularly in heterogeneous and fragmented agricultural landscapes. This study introduces a novel hierarchical remote sensing framework that integrates Sentinel-1 SAR and Sentinel-2 multispectral data with machine learning to generate high-resolution, multi-season crop type maps across extensive agricultural regions. Focusing on the western Negev in Israel (2018–2024), we developed a three-tier Random Forest classification workflow specifically designed for field crop mapping. The workflow integrates multi-temporal spectral, phenological, and SAR-derived features in a stepwise approach: (1) agricultural land cover types (94% overall accuracy), (2) wheat identification (95% accuracy), and (3) classification of 13 field crop types (81% accuracy), including key crops such as wheat, corn, and cotton. The hierarchical structure improved classification precision and enabled robust generalization across years, facilitating tracking of crop rotation, land-use intensity, and field-level management practices. Importantly, the model captured climate-driven phenological gradients in wheat, revealing spatial variability in crop development patterns that conventional methods often overlook. The novelty of this study lies in its scalable, multi-sensor classification framework that fuses radar, optical, and phenological information to support operational, dynamic crop monitoring. By coupling remote sensing outputs with national GIS infrastructure, this approach offers a cost-effective, transferable solution to advance precision agriculture, promote climate adaptation, and guide sustainable land-use planning at regional and national scales.

Original languageEnglish
Article number101650
JournalSmart Agricultural Technology
Volume12
DOIs
StatePublished - 1 Dec 2025

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 2 - Zero Hunger
    SDG 2 Zero Hunger
  2. SDG 8 - Decent Work and Economic Growth
    SDG 8 Decent Work and Economic Growth
  3. SDG 9 - Industry, Innovation, and Infrastructure
    SDG 9 Industry, Innovation, and Infrastructure
  4. SDG 12 - Responsible Consumption and Production
    SDG 12 Responsible Consumption and Production
  5. SDG 15 - Life on Land
    SDG 15 Life on Land
  6. SDG 17 - Partnerships for the Goals
    SDG 17 Partnerships for the Goals

Keywords

  • Crop rotation
  • Crop type mapping
  • Hierarchical classification
  • Phenology
  • Random forest
  • Sentinel-1 and sentinel-2

ASJC Scopus subject areas

  • Computer Science (miscellaneous)
  • General Agricultural and Biological Sciences
  • Artificial Intelligence

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