Human-Inspired Robotic Tactile Perception for Fluid
Document Type
Article
Publication Date
1-1-2024
Abstract
In order to achieve natural tactile sensation and satisfactory perception for robots in complex environments, this article presents a novel human-inspired robotic tactile sensing system for fluid. Specifically, a biomimetic fluid-sensitive handlike sensor (BFHS) is designed by mimicking the perception mechanism of human skin. A deep learning model is then developed to establish a mapping between tactile sensor offset and two key properties of fluid, namely, fluid flow direction and velocity. Furthermore, a feature correlation reconstruction (FCR) method is proposed to derive a new feature to improve the interpretability among features. Finally, an experimental system is constructed to validate the proposed BFHS. The experimental results demonstrate that its average accuracy in sensing fluid direction and velocity significantly outperforming human tactile perception. This can be viewed as a breakthrough finding in the field of robotic tactile perception.
Identifier
85195366043 (Scopus)
Publication Title
IEEE Sensors Journal
External Full Text Location
https://doi.org/10.1109/JSEN.2024.3407789
e-ISSN
15581748
ISSN
1530437X
First Page
23336
Last Page
23348
Issue
14
Volume
24
Recommended Citation
Wang, Yongyang; Zhang, Yu; Xiong, Pengwen; Zhou, Meng Chu; Liao, Junjie; and Song, Aiguo, "Human-Inspired Robotic Tactile Perception for Fluid" (2024). Faculty Publications. 981.
https://digitalcommons.njit.edu/fac_pubs/981