Neural NMPC through Signed Distance Field Encoding for Collision Avoidance
Norwegian University of Science and Technology
Video Presentation
Abstract
This paper introduces a neural Nonlinear Model Predictive Control (NMPC) framework for mapless, collision-free navigation in unknown environments with Aerial Robots, using onboard range sensing. We leverage deep neural networks to encode a single range image, capturing all the available information about the environment, into a Signed Distance Function (SDF). The proposed neural architecture consists of two cascaded networks: a convolutional encoder that compresses the input image into a low-dimensional latent vector, and a Multi-Layer Perceptron that approximates the corresponding spatial SDF. This latter network parametrizes an explicit position constraint used for collision avoidance, which is embedded in a velocity-tracking NMPC that outputs thrust and attitude commands to the robot. First, a theoretical analysis of the contributed NMPC is conducted, verifying recursive feasibility and stability properties under fixed observations. Subsequently, we evaluate the open-loop performance of the learning-based components as well as the closed-loop performance of the controller in simulations and experiments. The simulation study includes an ablation study, comparisons with two state-of-the-art local navigation methods, and an assessment of the resilience to drifting odometry. The real-world experiments are conducted in forest environments, demonstrating that the neural NMPC effectively performs collision avoidance in cluttered settings against an adversarial reference velocity input and drifting position estimates.
Graphical Abstract
BibTeX
@ARTICLE{jacquet2025neural,
AUTHOR={Jacquet, Martin and Harms, Marvin and Alexis, Kostas},
TITLE={Neural {NMPC} through Signed Distance Field Encoding for Collision Avoidance},
JOURNAL={The International Journal of Robotics Research},
YEAR={2025},
DOI={10.1177/02783649251401223},
}