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Reactive Collision Avoidance for Safe Agile Navigation

18 September 2024
Alessandro Saviolo
Niko Picello
Rishabh Verma
Giuseppe Loianno
Giuseppe Loianno
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Abstract

Reactive collision avoidance is essential for agile robots navigating complex and dynamic environments, enabling real-time obstacle response. However, this task is inherently challenging because it requires a tight integration of perception, planning, and control, which traditional methods often handle separately, resulting in compounded errors and delays. This paper introduces a novel approach that unifies these tasks into a single reactive framework using solely onboard sensing and computing. Our method combines nonlinear model predictive control with adaptive control barrier functions, directly linking perception-driven constraints to real-time planning and control. Constraints are determined by using a neural network to refine noisy RGB-D data, enhancing depth accuracy, and selecting points with the minimum time-to-collision to prioritize the most immediate threats. To maintain a balance between safety and agility, a heuristic dynamically adjusts the optimization process, preventing overconstraints in real time. Extensive experiments with an agile quadrotor demonstrate effective collision avoidance across diverse indoor and outdoor environments, without requiring environment-specific tuning or explicit mapping.

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@article{saviolo2025_2409.11962,
  title={ Reactive Collision Avoidance for Safe Agile Navigation },
  author={ Alessandro Saviolo and Niko Picello and Jeffrey Mao and Rishabh Verma and Giuseppe Loianno },
  journal={arXiv preprint arXiv:2409.11962},
  year={ 2025 }
}
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