Post-Doctoral Research Visit F - M Crowd Dynamics Data Acquisition And Processing For Large-Scale Dataset Construction H/F - INRIA
- CDD
- INRIA
Les missions du poste
A propos d'Inria
Inria est l'institut national de recherche dédié aux sciences et technologies du numérique. Il emploie 2600 personnes. Ses 215 équipes-projets agiles, en général communes avec des partenaires académiques, impliquent plus de 3900 scientifiques pour relever les défis du numérique, souvent à l'interface d'autres disciplines. L'institut fait appel à de nombreux talents dans plus d'une quarantaine de métiers différents. 900 personnels d'appui à la recherche et à l'innovation contribuent à faire émerger et grandir des projets scientifiques ou entrepreneuriaux qui impactent le monde. Inria travaille avec de nombreuses entreprises et a accompagné la création de plus de 200 start-up. L'institut s'eorce ainsi de répondre aux enjeux de la transformation numérique de la science, de la société et de l'économie.
Post-Doctoral Research Visit F/M Crowd dynamics data acquisition and processing for large-scale dataset construction
Le descriptif de l'offre ci-dessous est en Anglais
Type de contrat : CDD
Niveau de diplôme exigé : Thèse ou équivalent
Fonction : Post-Doctorant
A propos du centre ou de la direction fonctionnelle
The Inria Centre at Rennes University is one of Inria's nine centres and has more than thirty research teams. The Inria Centre is a major and recognized player in the field of digital sciences. It is at the heart of a rich R&D and innovation ecosystem: highly innovative PMEs, large industrial groups, competitiveness clusters, research and higher education players, laboratories of excellence, technological research institute, etc.
Contexte et atouts du poste
The VirtUs team at the Inria Centre at the University of Rennes is internationally recognized for its work in crowd simulation and the study of collective human behaviour. This postdoctoral position is part of the FOUL-X project (Programme Inria Quadrant), which aims to develop a new generation of crowd simulators capable of capturing the specific dynamics of crowds in real-world public spaces.
A key challenge in crowd simulation is the lack of datasets documenting the variety of crowd dynamics observed in different environments. Existing datasets are sparse and rarely capture the diversity of behaviours that emerge from different populations, activities, and spatial configurations. FOUL-X addresses this gap by designing and conducting field acquisition campaigns across multiple sites in France, with the goal of building an open, large-scale dataset of crowd dynamics.
This postdoc focuses on the data acquisition pipeline: from video capture in the field to the extraction of individual trajectories, and the characterization of crowd dynamics through dedicated metrics. The work will contribute directly to making the FOUL-X dataset available to the broader scientific community.
Mission confiée
Assignments: With the help of the VirtUs team and under the supervision of Julien Pettré, the recruited person will be tasked with building a unique, open dataset documenting the diversity of crowd dynamics observed in real-world public spaces. This dataset will constitute a landmark contribution to the field, providing the scientific community with data capturing crowd behaviours across a variety of sites, populations, and spatial configurations - something that does not currently exist at this scale and diversity.
For a better knowledge of the proposed research subject: A state of the art, bibliography and scientific references are available on the VirtUs team website: https://www.inria.fr/en/virtus
Collaboration: The recruited person will work in close connection with a PhD student of the VirtUs team, who develops the video-based pedestrian tracking pipeline used to extract individual trajectories from field recordings, and with the second postdoctoral researcher of the FOUL-X project, who is responsible for the data-driven modelling activities. This triangular collaboration ensures that the dataset is built in direct response to both the technical constraints of the tracking pipeline and the scientific requirements of the modelling work.
Responsibilities: The person recruited is responsible for the design and execution of field acquisition campaigns across multiple sites in France, the validation and structuring of the resulting trajectory dataset, and the development of metrics to characterise and compare the diversity of observed crowd dynamics. The recruited person will take initiatives to maximise the scientific value of the dataset and ensure its open dissemination to the community.
Steering/Management: The person recruited will be in charge of coordinating field missions - including logistical, technical, and ethical aspects of data capture - and will lead the effort to make the FOUL-X dataset publicly available in a reusable and well-documented form
Principales activités
Phase 1 - Pipeline setup and campaign preparation (months 1-6)
- Evaluate and validate the video-based trajectory extraction pipeline developed by the PhD student of the team, with respect to crowd density, resolution constraints, and GDPR compliance requirements
- Define the minimal data resolution required to extract complete and accurate individual trajectories while ensuring data anonymisation
- Contribute to the identification and selection of acquisition sites, targeting a diversity of crowd dynamics (populations, spatial configurations, activities)
- Participate in the preparation of the ethical framework and site agreements for field data collection
Phase 2 - Field acquisition and dataset construction (months 7-18)
- Lead and coordinate field acquisition campaigns across 4 to 6 sites in France, including on-site deployment of video capture equipment
- Supervise the processing of raw video data into structured trajectory datasets using the tracking pipeline
- Iteratively validate the quality, completeness and robustness of extracted trajectories
- Structure and document the dataset for internal use and future open dissemination
- Contribute to the first scientific dissemination of results (e.g. PED 2027 conference)
Phase 3 - Dataset characterisation and metrics (months 19-24)
- Develop quantitative metrics to characterise and compare the diversity of crowd dynamics across acquisition sites
- Contribute to the analysis of differences between crowd behaviours at multiple spatial and temporal scales
- Finalise the open release of the FOUL-X dataset on a dedicated public platform
- Contribute to a major publication presenting the dataset and its characterisation
Compétences
Technical skills (required):
- Video-based data processing and object tracking methods
- Programming in Python
- Experience with real-world data acquisition and processing pipelines
Technical skills (a plus):
- Familiarity with pedestrian trajectory analysis
- Knowledge of GDPR and ethical frameworks for data collection in public spaces
- Experience with open dataset publication and documentation
Languages:
- English (required for scientific dissemination)
- French (a plus for interactions with acquisition sites)
Relational skills:
- Strong organisational and coordination skills
- Ability to work in a collaborative and interdisciplinary environment
- Autonomy and initiative in managing field campaigns
Avantages
- Subsidized meals
- Partial reimbursement of public transport costs
- Leave: 7 weeks of annual leave + 10 extra days off due to RTT (statutory reduction in working hours) + possibility of exceptional leave (sick children, moving home, etc.)
- Possibility of teleworking (after 6 months of employment) and flexible organization of working hours
- Professional equipment available (videoconferencing, loan of computer equipment, etc.)
- Social, cultural and sports events and activities
- Access to vocational training
- Social security coverage
Rémunération
Monthly gross salary amounting to 2788 euros