Created by W.Langdon from gp-bibliography.bib Revision:1.9010
https://lup.lub.lu.se/search/files/227932138/Thesis_final_v2.pdf",
At the core of the approach is an interpretable policy representation based on behavior trees and motion generators (BTMGs), supporting both manual design and automated parameter tuning. Multi-objective Bayesian optimization enables learning skill parameters that balance performance metrics such as safety, speed, and task success. Policies are trained in simulation and successfully transferred to real robots for contact-rich manipulation tasks.
To support generalization, the framework models task variations using gaussian processes, enabling interpolation of BTMG parameters across unseen scenarios. This allows adaptive behavior without retraining for each new task instance.
Failure recovery is addressed through a hierarchical scheme. BTs are extended with a reactive planner that dynamically updates execution policies based on runtime observations. Vision-language models assist in detecting and identifying failures, and in generating symbolic corrections when tasks are predicted to fail.
The thesis concludes with a discussion of future work, including (1) using vision-language-action (VLA) models or diffusion policies to generate new skills on the fly from multimodal inputs, and (2) extending the reactive planner with proactive failure prediction to anticipate and prevent execution errors before they occur. Together, these directions aim to advance robotic systems that are more robust, adaptable, and autonomous.",
Genetic Programming entries for Faseeh Ahmad