Learning to Navigate Autonomously in Outdoor Environments : MAVNet
Saumya Kumaar, Arpit Sangotra, Sudakshin Kumar, Mayank Gupta,, Navaneethkrishnan B, S N Omkar

TL;DR
This paper introduces MAVNet, a fast and accurate imitation learning-based UAV navigation system using a 39-layer Inception model to autonomously navigate city streets with high precision and efficiency.
Contribution
The paper presents a novel deep learning architecture for UAV navigation that outperforms existing models in accuracy and processing speed, specifically tailored for urban road environments.
Findings
Achieved 98.44% navigation accuracy in urban environments.
Enabled UAVs to fly at speeds up to 6 m/sec.
Demonstrated superior performance over existing vision-based navigation methods.
Abstract
In the modern era of automation and robotics, autonomous vehicles are currently the focus of academic and industrial research. With the ever increasing number of unmanned aerial vehicles getting involved in activities in the civilian and commercial domain, there is an increased need for autonomy in these systems too. Due to guidelines set by the governments regarding the operation ceiling of civil drones, road-tracking based navigation is garnering interest . In an attempt to achieve the above mentioned tasks, we propose an imitation learning based, data-driven solution to UAV autonomy for navigating through city streets by learning to fly by imitating an expert pilot. Derived from the classic image classification algorithms, our classifier has been constructed in the form of a fast 39-layered Inception model, that evaluates the presence of roads using the tomographic reconstructions of…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Advanced Neural Network Applications
