DeepPilot: A CNN for Autonomous Drone Racing

Autonomous Drone Racing (ADR) was first proposed in IROS 2016. It called for the development of an autonomous drone capable of beating a human in a drone race. After almost five years, several teams have proposed different solutions with a common pipeline: gate detection; drone localization; and sta...

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Main Authors: Leticia Oyuki Rojas-Perez, Jose Martinez-Carranza
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Sensors
Subjects:
CNN
Online Access:https://www.mdpi.com/1424-8220/20/16/4524
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spelling doaj-3967969a85994c56aa210c89be51df7c2020-11-25T03:24:49ZengMDPI AGSensors1424-82202020-08-01204524452410.3390/s20164524DeepPilot: A CNN for Autonomous Drone RacingLeticia Oyuki Rojas-Perez0Jose Martinez-Carranza1Department of Computational Science, Instituto Nacional de Astrofísica, Óptica y Electrónica (INAOE), Puebla 72840, MexicoDepartment of Computational Science, Instituto Nacional de Astrofísica, Óptica y Electrónica (INAOE), Puebla 72840, MexicoAutonomous Drone Racing (ADR) was first proposed in IROS 2016. It called for the development of an autonomous drone capable of beating a human in a drone race. After almost five years, several teams have proposed different solutions with a common pipeline: gate detection; drone localization; and stable flight control. Recently, Deep Learning (DL) has been used for gate detection and localization of the drone regarding the gate. However, recent competitions such as the Game of Drones, held at NeurIPS 2019, called for solutions where DL played a more significant role. Motivated by the latter, in this work, we propose a CNN approach called DeepPilot that takes camera images as input and predicts flight commands as output. These flight commands represent: the angular position of the drone’s body frame in the roll and pitch angles, thus producing translation motion in those angles; rotational speed in the yaw angle; and vertical speed referred as altitude <i>h</i>. Values for these 4 flight commands, predicted by DeepPilot, are passed to the drone’s inner controller, thus enabling the drone to navigate autonomously through the gates in the racetrack. For this, we assume that the next gate becomes visible immediately after the current gate has been crossed. We present evaluations in simulated racetrack environments where DeepPilot is run several times successfully to prove repeatability. In average, DeepPilot runs at 25 frames per second (fps). We also present a thorough evaluation of what we called a temporal approach, which consists of creating a mosaic image, with consecutive camera frames, that is passed as input to the DeepPilot. We argue that this helps to learn the drone’s motion trend regarding the gate, thus acting as a local memory that leverages the prediction of the flight commands. Our results indicate that this purely DL-based artificial pilot is feasible to be used for the ADR challenge.https://www.mdpi.com/1424-8220/20/16/4524autonomous drone racingCNNdeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Leticia Oyuki Rojas-Perez
Jose Martinez-Carranza
spellingShingle Leticia Oyuki Rojas-Perez
Jose Martinez-Carranza
DeepPilot: A CNN for Autonomous Drone Racing
Sensors
autonomous drone racing
CNN
deep learning
author_facet Leticia Oyuki Rojas-Perez
Jose Martinez-Carranza
author_sort Leticia Oyuki Rojas-Perez
title DeepPilot: A CNN for Autonomous Drone Racing
title_short DeepPilot: A CNN for Autonomous Drone Racing
title_full DeepPilot: A CNN for Autonomous Drone Racing
title_fullStr DeepPilot: A CNN for Autonomous Drone Racing
title_full_unstemmed DeepPilot: A CNN for Autonomous Drone Racing
title_sort deeppilot: a cnn for autonomous drone racing
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-08-01
description Autonomous Drone Racing (ADR) was first proposed in IROS 2016. It called for the development of an autonomous drone capable of beating a human in a drone race. After almost five years, several teams have proposed different solutions with a common pipeline: gate detection; drone localization; and stable flight control. Recently, Deep Learning (DL) has been used for gate detection and localization of the drone regarding the gate. However, recent competitions such as the Game of Drones, held at NeurIPS 2019, called for solutions where DL played a more significant role. Motivated by the latter, in this work, we propose a CNN approach called DeepPilot that takes camera images as input and predicts flight commands as output. These flight commands represent: the angular position of the drone’s body frame in the roll and pitch angles, thus producing translation motion in those angles; rotational speed in the yaw angle; and vertical speed referred as altitude <i>h</i>. Values for these 4 flight commands, predicted by DeepPilot, are passed to the drone’s inner controller, thus enabling the drone to navigate autonomously through the gates in the racetrack. For this, we assume that the next gate becomes visible immediately after the current gate has been crossed. We present evaluations in simulated racetrack environments where DeepPilot is run several times successfully to prove repeatability. In average, DeepPilot runs at 25 frames per second (fps). We also present a thorough evaluation of what we called a temporal approach, which consists of creating a mosaic image, with consecutive camera frames, that is passed as input to the DeepPilot. We argue that this helps to learn the drone’s motion trend regarding the gate, thus acting as a local memory that leverages the prediction of the flight commands. Our results indicate that this purely DL-based artificial pilot is feasible to be used for the ADR challenge.
topic autonomous drone racing
CNN
deep learning
url https://www.mdpi.com/1424-8220/20/16/4524
work_keys_str_mv AT leticiaoyukirojasperez deeppilotacnnforautonomousdroneracing
AT josemartinezcarranza deeppilotacnnforautonomousdroneracing
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