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Vehicle Tracking Across Frame Sequences (Multi‑Class)

Type: multi-object tracking (MOT) · Input: sequential frames from a moving drone camera · Output: tracked trajectories with per-frame boxes and attributes.

We tracked vehicles across sequential frames, assigning each a unique track ID and maintaining it over time while classifying type — car, truck, bus, motorcycle, bicycle and more — and recording per-frame attributes.

Why tracking is hard

Following vehicles through video is harder than detecting them in a still: appearance shifts with lighting, shadow and weather; objects are occluded and re-emerge; and a moving drone camera changes the scene continuously. Holding a consistent identity through all of that is the core challenge.

What tracking reveals

Detection tells you what is present; tracking tells you what is happening. Continuous trajectories expose speeds, turning movements and flows — the dynamic layer that traffic studies, safety analysis and simulation depend on.

Vehicle Tracking Across Frame Sequences (Multi‑Class)
Genuine project imagery — TwinPlanet's own work. Drag to explore; click to enlarge.