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Division of Nanotechnology
1. Journal Articles
Recent Advances in Smart Tactile Sensory Systems with Brain-Inspired Neural Networks
Lee, Junho
;
Kwak, Jee Young
;
Keum, Kyobin
;
Kim, Kang Sik
;
Kim, Insoo
;
Lee, Myoung-Jae
;
Kim, Yong-Hoon
;
Park, Sung Kyu
Division of Nanotechnology
1. Journal Articles
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Title
Recent Advances in Smart Tactile Sensory Systems with Brain-Inspired Neural Networks
Issued Date
2024-04
Citation
Lee, Junho. (2024-04). Recent Advances in Smart Tactile Sensory Systems with Brain-Inspired Neural Networks. Advanced Intelligent Systems, 6(4). doi: 10.1002/aisy.202300631
Type
Article
Author Keywords
machine learning
;
neural networks
;
smart sensor
;
stretchable sensor
;
tactile sensors
Keywords
WEARABLE STRAIN SENSOR
;
SELF-POWERED PRESSURE
;
STRETCHABLE ELECTRONIC SKIN
;
HUMAN-MOTION
;
TEMPERATURE-SENSOR
;
COMPOSITE HYDROGELS
;
CARBON NANOTUBES
;
HIGH-SENSITIVITY
;
TRANSPARENT
;
ARRAY
ISSN
2640-4567
Abstract
Tactile sensory systems play a vital role in various emerging fields including robotics, prosthetics, and human-machine interfaces. However, traditional tactile sensors are typically designed to detect a single stimulus through a lock-and-key mechanism, which poses substantial challenges in the realization of multimodal tactile sensors. To address this issue, the convergence of tactile sensory systems with artificial neural network and machine learning (ML) platforms has been utilized to enhance the capabilities of multimodal sensors and enable signal decoupling/interpretation of mixed tactile stimuli. Herein, recent progress in multimodal sensors that can simultaneously identify various stimuli such as strain, pressure, and temperature is reviewed, providing in-depth understanding of materials, structures, and methodologies. In addition, accurate interpretation of signals from mixed tactile stimuli under complex conditions remains challenging. This review presents a comprehensive exploration of ML algorithms that mimic human neural networks, discussing their significance in advancing smart sensory systems and improving signal interpretation in complex and dynamic environments. Herein, a smart tactile sensory system is investigated that consists of strain, pressure, temperature, multisensor, and machine learning analysis, having advantages of the big data processing by using neural network. Analysis types such as classification, regression, and spike neural network can be used appropriately for each purpose to implement a future tactile sensor platform.image © 2024 The Authors. Advanced Intelligent Systems published by Wiley-VCH GmbH
URI
http://hdl.handle.net/20.500.11750/47863
DOI
10.1002/aisy.202300631
Publisher
Wiley
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Lee, Myoung-Jae
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