Print Email Facebook Twitter Deep Reinforcement Learning for Goal-directed Visual Navigation Title Deep Reinforcement Learning for Goal-directed Visual Navigation Author Kisantal, Máté (TU Delft Aerospace Engineering; TU Delft Control & Operations) Contributor de Croon, Guido (mentor) van Hecke, Kevin (mentor) Degree granting institution Delft University of Technology Programme Aerospace Engineering | Control & Simulation Date 2018-02-23 Abstract Safe navigation in a cluttered environment is a key capability for the autonomous operation of Micro Aerial Vehicles (MAVs). This work explores a (deep) Reinforcement Learning (RL) based approach for monocular vision based obstacle avoidance and goal directed navigation for MAVs in cluttered environments. We investigated this problem in the context of forest flight under the tree canopy.Our focus was on training an effective and practical neural control module, that is easy to integrate into conventional control hierarchies and can extend the capabilities of existing autopilot software stacks. This module has the potential to greatly improve the autonomous capabilities of MAVs, and their applicability for many interesting real world use-cases. We demonstrated training this module in a visually highly realistic virtual forest environment, created with a state-of-the-art computer game engine. Subject reinforcement learningdeep reinforcement learningartificial intelligencemachine learningcomputer visionMAVUAVMAVLABdroneautonomous navigationAutonomous Vehiclesdeep learningneural networks To reference this document use: http://resolver.tudelft.nl/uuid:07bc64ba-42e3-4aa7-ba9b-ac0ac4e0e7a1 Part of collection Student theses Document type master thesis Rights © 2018 Máté Kisantal Files PDF Kisantal_thesis_FINAL.pdf 23.55 MB Close viewer /islandora/object/uuid:07bc64ba-42e3-4aa7-ba9b-ac0ac4e0e7a1/datastream/OBJ/view