10 research outputs found
AlphaPilot: Autonomous Drone Racing
This paper presents a novel system for autonomous, vision-based drone racing
combining learned data abstraction, nonlinear filtering, and time-optimal
trajectory planning. The system has successfully been deployed at the first
autonomous drone racing world championship: the 2019 AlphaPilot Challenge.
Contrary to traditional drone racing systems, which only detect the next gate,
our approach makes use of any visible gate and takes advantage of multiple,
simultaneous gate detections to compensate for drift in the state estimate and
build a global map of the gates. The global map and drift-compensated state
estimate allow the drone to navigate through the race course even when the
gates are not immediately visible and further enable to plan a near
time-optimal path through the race course in real time based on approximate
drone dynamics. The proposed system has been demonstrated to successfully guide
the drone through tight race courses reaching speeds up to 8m/s and ranked
second at the 2019 AlphaPilot Challenge.Comment: Accepted at Robotics: Science and Systems 2020, associated video at
https://youtu.be/DGjwm5PZQT
Towards Low-Latency High-Bandwidth Control of Quadrotors using Event Cameras
Event cameras are a promising candidate to enable high speed vision-based
control due to their low sensor latency and high temporal resolution. However,
purely event-based feedback has yet to be used in the control of drones. In
this work, a first step towards implementing low-latency high-bandwidth control
of quadrotors using event cameras is taken. In particular, this paper addresses
the problem of one-dimensional attitude tracking using a dualcopter platform
equipped with an event camera. The event-based state estimation consists of a
modified Hough transform algorithm combined with a Kalman filter that outputs
the roll angle and angular velocity of the dualcopter relative to a horizon
marked by a black-and-white disk. The estimated state is processed by a
proportional-derivative attitude control law that computes the rotor thrusts
required to track the desired attitude. The proposed attitude tracking scheme
shows promising results of event-camera-driven closed loop control: the state
estimator performs with an update rate of 1 kHz and a latency determined to be
12 ms, enabling attitude tracking at speeds of over 1600 deg/s
AlphaPilot: autonomous drone racing
This paper presents a novel system for autonomous, vision-based drone racing combining learned data abstraction, nonlinear filtering, and time-optimal trajectory planning. The system has successfully been deployed at the first autonomous drone racing world championship: the 2019 AlphaPilot Challenge. Contrary to traditional drone racing systems, which only detect the next gate, our approach makes use of any visible gate and takes advantage of multiple, simultaneous gate detections to compensate for drift in the state estimate and build a global map of the gates. The global map and drift-compensated state estimate allow the drone to navigate through the race course even when the gates are not immediately visible and further enable to plan a near time-optimal path through the race course in real time based on approximate drone dynamics. The proposed system has been demonstrated to successfully guide the drone through tight race courses reaching speeds up to 8m/s and ranked second at the 2019 AlphaPilot Challenge
An omni-directional multirotor vehicle
ISSN:0957-4158ISSN:1873-400
Design, modeling and control of an omni-directional aerial vehicle
In this paper we present the design and control of a novel six degrees-of-freedom aerial vehicle. Based on a static force and torque analysis for generic actuator configurations, we derive an eight-rotor configuration that maximizes the vehicle's agility in any direction. The proposed vehicle design possesses full force and torque authority in all three dimensions. A control strategy that allows for exploiting the vehicle's decoupled translational and rotational dynamics is introduced. A prototype of the proposed vehicle design is built using reversible motor-propeller actuators and capable of flying at any orientation. Preliminary experimental results demonstrate the feasibility of the novel design and the capabilities of the vehicle
Towards Low-Latency High-Bandwidth Control of Quadrotors using Event Cameras
Event cameras are a promising candidate to enable high speed vision-based control due to their low sensor latency and high temporal resolution. However, purely event-based feedback has yet to be used in the control of drones. In this work, a first step towards implementing low-latency high-bandwidth control of quadrotors using event cameras is taken. In particular, this paper addresses the problem of one-dimensional attitude tracking using a dualcopter platform equipped with an event camera. The event-based state estimation consists of a modified Hough transform algorithm combined with a Kalman filter that outputs the roll angle and angular velocity of the dualcopter relative to a horizon marked by a black-and-white disk. The estimated state is processed by a proportional-derivative attitude control law that computes the rotor thrusts required to track the desired attitude. The proposed attitude tracking scheme shows promising results of event-camera-driven closed loop control: the state estimator performs with an update rate of 1 kHz and a latency determined to be 12 ms, enabling attitude tracking at speeds of over 1600°/s
AlphaPilot: Autonomous Drone Racing
This paper presents a novel system for autonomous,vision-based drone racing combining learned data abstraction,nonlinear filtering, and time-optimal trajectory planning. Thesystem has successfully been deployed at the first autonomousdrone racing world championship: the2019 AlphaPilot Challenge.Contrary to traditional drone racing systems, which only detectthe next gate, our approach makes use of any visible gate andtakes advantage of multiple, simultaneous gate detections tocompensate for drift in the state estimate and build a global mapof the gates. The global map and drift-compensated state estimateallow the drone to navigate through the race course even whenthe gates are not immediately visible and further enable to plana near time-optimal path through the race course in real timebased on approximate drone dynamics. The proposed system hasbeen demonstrated to successfully guide the drone through tightrace courses reaching speeds up to8 m/sand ranked second atthe2019 AlphaPilot Challeng