Context-Based Echo State Networks with Prediction Confidence for Human-Robot Shared Control
Negin Amirshirzad, Mehmet Arda Eren, Erhan Oztop

TL;DR
This paper introduces CESN+, a lightweight reservoir computing model that learns and generates human movement trajectories with confidence measures, outperforming existing methods and enabling adaptive human-robot shared control.
Contribution
CESN+ is a novel, fast-training, and extrapolation-capable reservoir computing framework that provides confidence estimates for movement trajectories in shared control.
Findings
CESN+ outperforms CNMP in trajectory generation tasks.
CESN+ trains faster than comparable models.
Adaptive shared control with CESN+ reduces human workload.
Abstract
In this paper, we propose a novel lightweight learning from demonstration (LfD) model based on reservoir computing that can learn and generate multiple movement trajectories with prediction intervals, which we call as Context-based Echo State Network with prediction confidence (CESN+). CESN+ can generate movement trajectories that may go beyond the initial LfD training based on a desired set of conditions while providing confidence on its generated output. To assess the abilities of CESN+, we first evaluate its performance against Conditional Neural Movement Primitives (CNMP), a comparable framework that uses a conditional neural process to generate movement primitives. Our findings indicate that CESN+ not only outperforms CNMP but is also faster to train and demonstrates impressive performance in generating trajectories for extrapolation cases. In human-robot shared control…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Memory and Neural Computing · Neural Networks and Applications
MethodsSparse Evolutionary Training
