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Event-Only Drone Trajectory Forecasting with RPM-Modulated Kalman Filtering

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Event cameras provide high-temporal-resolution visual sensing that is well suited for observing fast-moving aerial objects; however, their use for drone trajectory prediction remains limited. This work introduces an event-only drone forecasting method that exploits propeller-induced motion cues. Propeller rotational speed are extracted directly from raw event data and fused within an RPM-aware Kalman filtering framework. Evaluations on the FRED dataset show that the proposed method outperforms learning-based approaches and vanilla kalman filter in terms of average distance error and final distance error at 0.4s and 0.8s forecasting horizons. The results demonstrate robust and accurate short- and medium-horizon trajectory forecasting without reliance on RGB imagery or training data.

Hari Prasanth S.M., Pejman Habibiroudkenar, Eerik Alamikkotervo, Dimitrios Bouzoulas, Risto Ojala• 2026

Related benchmarks

TaskDatasetResultRank
Trajectory ForecastingFRED 0.4s horizon
ADE15.35
8
Trajectory ForecastingFRED 0.8s horizon
ADE34.85
8
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