DogSurf: Quadruped Robot Capable of GRU-based Surface Recognition for Blind Person Navigation
Author(s)
Bazhenov, Artem; Berman, Vladimir; Satsevich, Sergei; Shalopanova, Olga; Cabrera, Miguel; Lykov, Artem; Tsetserukou, Dzmitry; ... Show more Show less
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Show full item recordAbstract
This paper introduces DogSurf - a newapproach of using quadruped robots to help visually impaired people navigate in real world. The presented method allows the quadruped robot to detect slippery surfaces, and to use audio and haptic feedback to inform the user when to stop. A state-of-the-art GRU-based neural network architecture with mean accuracy of 99.925% was proposed for the task of multiclass surface classification for quadruped robots. A dataset was collected on a Unitree Go1 Edu robot. The dataset and code have been posted to the public domain.
Description
HRI 2024, March 11–14, 2024, Boulder, Colorado, USA
Date issued
2024-03-11Publisher
ACM|Companion of the 2024 ACM/IEEE International Conference on Human-Robot Interaction
Citation
Bazhenov, Artem, Berman, Vladimir, Satsevich, Sergei, Shalopanova, Olga, Cabrera, Miguel et al. 2024. "DogSurf: Quadruped Robot Capable of GRU-based Surface Recognition for Blind Person Navigation."
Version: Final published version
ISBN
979-8-4007-0323-2