aerial-autonomy-stack -- a Faster-than-real-time, Autopilot-agnostic, ROS2 Framework to Simulate and Deploy Perception-based Drones
Jacopo Panerati, Sina Sajjadi, Sina Soleymanpour, Varunkumar Mehta, Iraj Mantegh

TL;DR
The paper introduces aerial-autonomy-stack, an open-source ROS2 framework enabling faster-than-real-time simulation and deployment of perception-based autonomous drones across different autopilots.
Contribution
It provides a unified, fast simulation and deployment pipeline for aerial autonomy, bridging hardware and software heterogeneity in field robots.
Findings
Supports over 20x faster-than-real-time simulation
Enables rapid development and testing of autonomous drone systems
Compatible with PX4 and ArduPilot autopilots
Abstract
Unmanned aerial vehicles are rapidly transforming multiple applications, from agricultural and infrastructure monitoring to logistics and defense. Introducing greater autonomy to these systems can simultaneously make them more effective as well as reliable. Thus, the ability to rapidly engineer and deploy autonomous aerial systems has become of strategic importance. In the 2010s, a combination of high-performance compute, data, and open-source software led to the current deep learning and AI boom, unlocking decades of prior theoretical work. Robotics is on the cusp of a similar transformation. However, physical AI faces unique hurdles, often combined under the umbrella term "simulation-to-reality gap". These span from modeling shortcomings to the complexity of vertically integrating the highly heterogeneous hardware and software systems typically found in field robots. To address the…
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