Autonomous drone race: A computationally efficient vision-based navigation and control strategy
S.Li, M.M.O.I. Ozo, C. De Wagter, G.C.H.E. de Croon

TL;DR
This paper presents an efficient autonomous drone racing system that uses a novel snake gate detection algorithm and a robust pose estimation method, enabling high-speed navigation without heavy computational resources.
Contribution
The paper introduces a computationally efficient vision-based navigation and control strategy for autonomous drone racing, replacing traditional resource-intensive methods with novel algorithms suitable for micro aerial vehicles.
Findings
Drone can complete a 15-gate race at 1.5m/s
Snake gate detection runs at 20Hz on a Parrot Bebop drone
System outperforms previous autonomous drone race speeds
Abstract
Drone racing is becoming a popular sport where human pilots have to control their drones to fly at high speed through complex environments and pass a number of gates in a pre-defined sequence. In this paper, we develop an autonomous system for drones to race fully autonomously using only onboard resources. Instead of commonly used visual navigation methods, such as simultaneous localization and mapping and visual inertial odometry, which are computationally expensive for micro aerial vehicles (MAVs), we developed the highly efficient snake gate detection algorithm for visual navigation, which can detect the gate at 20HZ on a Parrot Bebop drone. Then, with the gate detection result, we developed a robust pose estimation algorithm which has better tolerance to detection noise than a state-of-the-art perspective-n-point method. During the race, sometimes the gates are not in the drone's…
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