Consistency Matters: Defining Demonstration Data Quality Metrics in Robot Learning from Demonstration
Maram Sakr, H.F. Machiel Van der Loos, Dana Kulic, Elizabeth Croft

TL;DR
This paper introduces and validates demonstration data quality metrics based on consistency that predict learning success and generalization in robot learning from human demonstrations, improving reliability without expert intervention.
Contribution
The paper systematically evaluates demonstration consistency measures and demonstrates their effectiveness in predicting robot learning success and generalization across tasks.
Findings
Demonstration consistency significantly impacts success rates.
Metrics predict task success with 70% and 89% accuracy.
Metrics estimate generalized performance with 76% and 91% accuracy.
Abstract
Learning from Demonstration (LfD) empowers robots to acquire new skills through human demonstrations, making it feasible for everyday users to teach robots. However, the success of learning and generalization heavily depends on the quality of these demonstrations. Consistency is often used to indicate quality in LfD, yet the factors that define this consistency remain underexplored. In this paper, we evaluate a comprehensive set of motion data characteristics to determine which consistency measures best predict learning performance. By ensuring demonstration consistency prior to training, we enhance models' predictive accuracy and generalization to novel scenarios. We validate our approach with two user studies involving participants with diverse levels of robotics expertise. In the first study (N = 24), users taught a PR2 robot to perform a button-pressing task in a constrained…
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Taxonomy
TopicsMachine Learning and Algorithms · Machine Learning and Data Classification · Data Quality and Management
