Tracking and Relative Localization of Drone Swarms with a Vision based Headset

Опубликовано: 01 Апрель 2026
на канале: EPFLLIS
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Pavliv, M., Schiano, F., Reardon, C., Floreano, D. and Loianno, G., 2021. Tracking and relative localization of drone swarms with a vision-based headset. IEEE Robotics and Automation Letters, 6(2), pp.1455-1462.

Paper: https://ieeexplore.ieee.org/document/...

Abstract: We address the detection, tracking, and relative localization of the agents of a drone swarm from a human perspective using a headset equipped with a single camera and anInertial Measurement Unit (IMU). We train and deploy a deep neural network detector on image data to detect the drones. A joint probabilistic data association filter resolves the detection problems and couples this information with IMU data to track the agents. In order to estimate the drones’ relative poses in3D space with respect to the human, we use an additional deep neural network that processes image regions of the drones provided by the tracker. Finally, to speed up the deep neural networks’ training, we introduce an automated labeling process.The effectiveness of the proposed approach is validated by several experimental results. The approach is real-time and does not rely on any communication between the human and the drones. It can be used to spatially task a swarm of drones and also employed for formation control and coordination of terrestrial vehicles.