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- Design and manage the field data collection pipeline - including body-worn cameras, fixed-position gesture capture cameras, and pole-mounted lane closure cameras deployed at active road worksites
- Annotate, label, and structure video datasets capturing vehicle behaviour, ASO gestures, and traffic compliance events
- Train and optimise computer vision models (YOLOv8 or equivalent) for vehicle detection, trajectory tracking, and driver compliance classification in outdoor road worksite environments
- Calculate traffic safety metrics including Post-Encroachment Time (PET) to identify and prioritise near-miss events for model training
- Build and refine logit or ML-based conflict severity models to support edge case identification in the training dataset
- Export trained models to TensorRT and deploy on NVIDIA Jetson Orin NX hardware
- Develop ROS2 integration for deploying the perception pipeline onto a humanoid robot platform
- Build multi-robot coordination logic using ROS2 pub/sub architecture for coordinated deployment scenarios
- Support gesture recognition model development using captured ASO hand-signal datasets
Requirements
- Degree in Computer Science, Electrical Engineering, or a related field
- Hands-on experience with YOLOv5 / YOLOv8 model training and deployment
- Experience with object tracking (vehicle or pedestrian trajectory analysis)
- Familiarity with traffic safety metrics (PET, conflict analysis) is a strong advantage
- Python proficiency experience with PyTorch and TensorRT preferred
- Experience or strong interest in ROS2 and embedded deployment (Jetson platform) preferred
- Ability to work in outdoor environments at road worksite locations
- Self-directed and comfortable working on long-horizon R&D projects
Job ID: 148373879
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