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A Comprehensive Framework for UAV-Based Autonomous Target Finding in Environments with Limited Global Navigation Satellite Systems and Reduced Visibility | IEEE Conference Publication | IEEE Xplore

A Comprehensive Framework for UAV-Based Autonomous Target Finding in Environments with Limited Global Navigation Satellite Systems and Reduced Visibility


Abstract:

This paper presents a comprehensive framework for Unmanned Aerial Vehicles (UAVs) autonomous navigation in cluttered environments with no Global Navigation Satellite Syst...Show More

Abstract:

This paper presents a comprehensive framework for Unmanned Aerial Vehicles (UAVs) autonomous navigation in cluttered environments with no Global Navigation Satellite System (GNSS) and low visibility. Partially Observable Markov Decision Process (POMDP) is used to model decision making under uncertainty. The POMDP formulation was designed to allow a UAV to achieve a Search and Rescue (SAR) mission in an environment comprised of a restricted flying area, obstacles, no GNSS, and visual obscurant in the form of smoke. The mission objective is to explore the environment while avoiding obstacles to detect a human being using a thermal camera. A more realistic observation of the target's detection was modelled within the POMDP. This includes enhancing the state and observation vectors to include the characteristics of a bounding box generated by a deep-learning classifier. The framework also integrates a 2D LIDAR/Inertial odometry using the Hector SLAM package for pose estimation. It is tested in the simulation using Gazebo, Robotic Operating System (ROS), and the PX4 Firmware. Experiments conducted in the simulated SAR scenario tested the system under varying levels of pose estimation uncertainty, with an unknown target position. The experiments with the new observation function and low uncertainty pose estimation were a success. However, the framework was limited with higher uncertainty from the LIDAR/Inertial odometry, demonstrating the importance of a reliable pose estimation.
Date of Conference: 04-07 June 2024
Date Added to IEEE Xplore: 19 June 2024
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Conference Location: Chania - Crete, Greece
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I. Introduction

Difficult environments characterized by low visibility, restricted freedom of movement, and no GNSS generate challenges for UAV autonomous navigation. Poor visibility (smoke, dust, obscurity…) causes difficulties for the agent to observe its surroundings, while the lack of GNSS forces the UAV to use onboard sensors to estimate its position. These challenging conditions often restrict the use of autonomous UAVs in applications such as mining [1]–[3] and SAR [4], [5]. Decision-making under uncertainty is the process of an agent receiving an incomplete or noisy observation at a precise time, and then choosing an action based on this observation [6]. Modelling and accounting for uncertainty can be a fundamental feature when designing a solution allowing an agent to autonomously navigate in these chal-lenging environments.

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