Prof. Jongcheol Lee's Team Developed A Rapid Air-Writing Recognition Method Using A Wearable Band
- admin
- 2024-11-04
- 92
· Professor Jongcheol Lee's Research Team in the Department of Electronics Convergence Engineering has Developed a Rapid Application Method for Dynamic Air-Writing Recognition
Using a Wearable Wristband Integrated with a Self-Supervised Contrastive
Learning Algorithm
- Paper published in the journal Nano-Micro
Letters (Publisher: Springer), 2023 JCR Q1, IF=31.6 (Vol. 17, Article No. 41,
2024.10.16) -
Professor Jongcheol Lee's research team from the Department of Electronics
Convergence Engineering at Kwangwoon University,
in international collaboration with Professor Yang Li’s team from Shangdong
University in Zhen'an, China, Professor Guojian Xun’s team from Beijing Institute
of Technology (BIT), and Professor Namyoung Kim’s team from Kwangwoon University, has developed a rapid
application method for dynamic air-writing recognition using a wearable
wristband integrated with a self-supervised contrastive learning algorithm.
In this study, a self-supervised contrastive AI algorithm was applied to a
wearable wristband equipped with a hydrogel pressure sensor to enable real-time
recognition of air-writing. The utility of this approach was demonstrated
through high-accuracy recognition of numbers and letters and allowing input
without a keyboard with a high level of reliability. Such a wearable wristband
has significant impact, as it integrates seamlessly into users' daily lives and
provides an intuitive means of communicating with digital devices through
gestures without interruption.
This research
was supported by the 2023 University Academic Research Fund and the BK21 Phase
4 project. It was published in the journal Nano-Micro Letters (Q1, IF=31.6,
JIF=98.2) under the title “A Rapid Adaptation Approach for Dynamic Air-Writing
Recognition Using Wearable Wristbands with Self-Supervised Contrastive
Learning.”
The journal link is as follows. https://doi.org/10.1007/s40820-024-01545-8
a. A wearable wristband for air-writing recognition, equipped with four
hydrogel pressure sensors (D1-D4) combined with a wireless Wi-Fi module
b. (i) An iontronic device composed of AgNWs/PVA electrodes and a
micro-cone structured photocurable ionic hydrogel, (ii) a simplified block
diagram of the wristband system and a customized user interface
c. Real-time prediction and display of air-writing through TS-VFC learning.
Rapid adaptation process for directions, numbers, and letters: Using TS-VFC
learning to form LTS, with pre-training conducted through random wrist
movements, followed by fine-tuning with few-shot labeled data for quick
application across various tasks.