Podcast cover for "Active Constraint Learning in High Dimensions from Demonstrations" by Zheng Qiu et al.
Episode

Active Constraint Learning in High Dimensions from Demonstrations

Dec 28, 20259:00
cs.ROArtificial IntelligenceMachine Learningeess.SYOptimization and Control
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Abstract

We present an iterative active constraint learning (ACL) algorithm, within the learning from demonstrations (LfD) paradigm, which intelligently solicits informative demonstration trajectories for inferring an unknown constraint in the demonstrator's environment. Our approach iteratively trains a Gaussian process (GP) on the available demonstration dataset to represent the unknown constraints, uses the resulting GP posterior to query start/goal states, and generates informative demonstrations which are added to the dataset. Across simulation and hardware experiments using high-dimensional nonlinear dynamics and unknown nonlinear constraints, our method outperforms a baseline, random-sampling based method at accurately performing constraint inference from an iteratively generated set of sparse but informative demonstrations.

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Cite This Paper

Year:2025
Category:cs.RO
APA

Qiu, Z., Chiu, C., Chou, G. (2025). Active Constraint Learning in High Dimensions from Demonstrations. arXiv preprint arXiv:2512.22757.

MLA

Zheng Qiu, Chih-Yuan Chiu, and Glen Chou. "Active Constraint Learning in High Dimensions from Demonstrations." arXiv preprint arXiv:2512.22757 (2025).