CONTEXT :
Public establishment belonging to IMT (Institut Mines-Télécom), placed under the supervision of the Ministry of Economy, Finance and Industrial and Digital Sovereignty, IMT Nord Europe has three main objectives: providing our students with ethically responsible engineering practice enabling them to solve 21st century issues, carrying out our R&D activities leading to outstanding innovations and supporting territorial development through innovation and entrepreneurship. Ideally positioned at the heart of Europe, 1 hour away from Paris, 30 min from Brussels and 1h30 from London, IMT Nord Europe has strong ambitions to become a main actor of the current industrial transitions, digital and environmental, by combining education and research on engineering and digital technologies.
Located on two main campuses dedicated to research and education in Douai and Lille, IMT Nord Europe offers research facilities of almost 20,000m² in the following areas:
Digital science,
Energy and Environment,
Materials and Processes.
For more details, visit the School’s website : www.imt-nord-europe.fr
Scientific Context:
Precision agriculture aims to optimize the use of inputs by integrating a wide range of sensing and data analysis technologies. Drones equipped with multispectral and LiDAR sensors offer complementary views of crop structure and physiology, while ground and weather data provide essential environmental context. Combining these heterogeneous sources enables a deeper understanding of the agroecosystem and supports AI-driven decision-making for precision irrigation.
This internship is part of the industrial chair POMME d’API, which brings together IMT Nord Europe, Polytech Lille, DOWNS, and Osiris Agriculture. Built around two PhD projects, the chair mobilizes the expertise of each laboratory and company to develop cutting-edge technologies for data acquisition, processing, and fusion aimed at improving the conditioning and irrigation of potato crops and making production more sustainable.
Osiris Agriculture is a human-scale company and an ambitious technological venture. With two pre-industrial versions deployed in 2024, its autonomous irrigation robot OSCAR is capable of delivering the precise daily dose of inputs (water and fertilizers) needed for optimal plant development.
This internship contributes directly to that effort by combining aerial (drone-based) and ground-level sensing to better understand and model crop–soil–weather interactions under real field conditions, particularly in potato test plots.
Objectives:
Develop a research-oriented workflow for multisource data acquisition, processing, analysis, and multimodal modeling. The main objectives include:
· Design and execute data acquisition campaigns using drones (multispectral, LiDAR) coordinated with ground measurements and weather data streams.
· Develop calibration and synchronization protocols to ensure consistency across sensors and sources (intrinsic/extrinsic calibration, precise timestamping, GPS/IMU alignment).
· Implement preprocessing and cleaning pipelines (radiometric, geometric, and temporal corrections) for analysis-ready datasets.
· Conduct exploratory and statistical data analysis; extract biophysical indicators per modality (e.g., vegetation indices, canopy height models).
· Build and evaluate a multimodal model integrating aerial, ground, and environmental data to characterize field conditions and support precision irrigation decisions (example model to explore: XGBoost).
Research Contributions:
The internship will contribute to ongoing research on multisensor calibration, data fusion, and multimodal learning for smart farming. The work will investigate alignment strategies and fusion schemes (early/late fusion) that combine spectral, structural (3D), and environmental variables to interpret crop status and ecosystem dynamics; results may support future publications within the PhD framework.
Expected Outcomes
· A validated multisource data acquisition protocol integrating aerial, ground, and weather data.
· A harmonized multimodal dataset (multispectral imagery, LiDAR point clouds, ground measurements, and weather records) with complete metadata.
· A research prototype of a multimodal fusion or predictive model for field ecosystem analysis, with baseline performance and ablation studies.
· A technical and scientific report documenting methodology, experiments, and results, with recommendations for PhD continuation.
Candidate Profile:
· Master 2 (MSc) or equivalent in Data Science, Computer Vision/Imaging, Remote Sensing, or Artificial Intelligence.
· Strong programming skills in Python; good software engineering practices (Git, notebooks, virtual environments).
· Knowledge of machine learning fundamentals and experience with at least one framework (scikit-learn, PyTorch, or TensorFlow).
· Ability and willingness to participate in field campaigns; driving license mandatory.
Practical Information:
· Start date: between March and April 2025.
· Paid internship; duration: 6 months.
· Location : IMT Nord Europe, Lille campus at Villeneuve d’Ascq (Cité Scientifique), in collaboration with Osiris Agriculture.
Application:
Please send a CV, a cover letter, and transcripts for M1 and M2 to: Hazem Wannous — [email protected]
INFORMATION AND APPLICATION METHODS :
For any information on the missions, please contact Hazem Wannous — [email protected]
For any administrative information, please contact the Human Resources Department: [email protected]
This job is offered to civil servants on a mobility basis, or on a contractual basis under public law.
In addition, the position can be adapted for a disabled person.
DEADLINE DATE FOR SUBMISSIONS : 15/03/2026
L’IMT soutient l’innovation et le développement des entreprises. Il forme pour l’économie chaque année 12 000 ingénieurs, managers et docteurs.
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