2021
DOI: 10.48550/arxiv.2112.01688
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Machine Learning Subsystem for Autonomous Collision Avoidance on a small UAS with Embedded GPU

Abstract: Interest in unmanned aerial system (UAS) powered solutions for 6G communication networks has grown immensely with the widespread availability of machine learning based autonomy modules and embedded graphical processing units (GPUs). While these technologies have revolutionized the possibilities of UAS solutions, designing an operable, robust autonomy framework for UAS remains a multi-faceted and difficult problem. In this work, we present our novel, modular framework for UAS autonomy, entitled MR-iFLY, and dis… Show more

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