From traditional to robot-assisted learning: a multimodal robot-assisted learning framework for enhancing english acquisition in korean preschoolers
- Authors
- Rybakova, Anastasiya; Choi, Jongsuk
- Issue Date
- 2026-01
- Publisher
- Springer Verlag
- Citation
- Intelligent Service Robotics, v.19, no.2
- Abstract
- Traditional language instruction has been the dominant approach in early childhood education, yet integrating robotic systems presents new opportunities to enhance second language acquisition. This study introduces a multimodal robot-assisted learning framework featuring the OpenManipulator-X, an interactive robotic system designed to support English acquisition among Korean preschoolers. A comparative experiment was conducted in which children first participated in teacher-led English instruction, followed by robot-assisted learning using task-based interactions, including pick-and-place activities and collaborative drawing. The study evaluates engagement, vocabulary acquisition, and learning effectiveness across both methods. Results indicate that robot-assisted learning fosters greater engagement and interaction, while language retention remained comparable to traditional instruction. In addition, the robot's physical behaviors-such as object manipulation and drawing-contributed to increased attention and participation. The novelty of this work lies in its integration of multimodal interaction combining robotic embodiment, AR-based manipulation, and tablet-guided educational tasks within a unified instructional system. These findings contribute to child-robot interaction (CRI) research, offering a scalable hybrid learning model for early childhood education. Future work should explore AI-driven personalization and long-term developmental impact.
- Keywords
- Child-robot interaction; Educational robotics; Learning second language; Multimodal framework
- ISSN
- 1861-2776
- URI
- https://pubs.kist.re.kr/handle/201004/154329
- DOI
- 10.1007/s11370-025-00685-z
- Appears in Collections:
- KIST Article > 2026
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