OctoPath: An OcTree Based Self-Supervised Learning Approach to Local Trajectory Planning for Mobile Robots
Bogdan Trasnea, Cosmin Ginerica, Mihai Zaha, Gigel Macesanu, Claudiu, Pozna, Sorin Grigorescu

TL;DR
OctoPath is a self-supervised deep learning approach that uses an octree-based environment model to predict local trajectories for mobile robots, improving planning in complex environments.
Contribution
It introduces a novel octree-based classification method for trajectory prediction, avoiding regression pitfalls and enabling effective self-supervised learning for local path planning.
Findings
Outperforms baseline A-Star and regression-based methods in accuracy.
Effective in both indoor and outdoor scenarios.
Validated through simulation and real-world experiments.
Abstract
Autonomous mobile robots are usually faced with challenging situations when driving in complex environments. Namely, they have to recognize the static and dynamic obstacles, plan the driving path and execute their motion. For addressing the issue of perception and path planning, in this paper, we introduce OctoPath , which is an encoder-decoder deep neural network, trained in a self-supervised manner to predict the local optimal trajectory for the ego-vehicle. Using the discretization provided by a 3D octree environment model, our approach reformulates trajectory prediction as a classification problem with a configurable resolution. During training, OctoPath minimizes the error between the predicted and the manually driven trajectories in a given training dataset. This allows us to avoid the pitfall of regression-based trajectory estimation, in which there is an infinite state space for…
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