Planning and Perception for Unmanned Aerial Vehicles in Object and Environmental Monitoring
Harnaik Dhami

TL;DR
This paper develops advanced planning and perception algorithms for UAVs to improve object and environmental monitoring, including object tracking, infrastructure inspection, and wildfire detection, validated through experiments and simulations.
Contribution
It introduces novel planning algorithms for UAVs tailored to object and environment monitoring, integrating deep learning and multi-UAV coordination.
Findings
Optimized visual coverage for object reconstruction.
Effective multi-UAV path planning for inspections.
Early wildfire detection using informative path planning and LSTM.
Abstract
Unmanned Aerial Vehicles (UAVs) equipped with high-resolution sensors enable extensive data collection from previously inaccessible areas at a remarkable spatio-temporal scale, promising to revolutionize fields such as precision agriculture and infrastructure inspection. To fully exploit their potential, developing autonomy algorithms for planning and perception is crucial. This dissertation focuses on developing planning and perception algorithms tailored to UAVs used in monitoring applications. In the first part, we address object monitoring and its associated planning challenges. Object monitoring involves continuous observation, tracking, and analysis of specific objects. We tackle the problem of visual reconstruction where the goal is to maximize visual coverage of an object in an unknown environment efficiently. Leveraging shape prediction deep learning models, we optimize…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization
