Sitting Posture Recognition Using a Spiking Neural Network
- URL: http://arxiv.org/abs/2212.12908v1
- Date: Sun, 25 Dec 2022 14:20:09 GMT
- Title: Sitting Posture Recognition Using a Spiking Neural Network
- Authors: Jianquan Wang, Basim Hafidh, Haiwei Dong, and Abdulmotaleb El Saddik
- Abstract summary: The system can receive surface pressure data from the designed sensor and provide feedback for guiding the user towards proper sitting postures.
We used a liquid state machine and a logistic regression classifier to construct a spiking neural network for classifying 15 sitting postures.
The experimental results consisting of 15 sitting postures from 19 participants show that the prediction precision of our SNN is 88.52%.
- Score: 5.871032585001081
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To increase the quality of citizens' lives, we designed a personalized smart
chair system to recognize sitting behaviors. The system can receive surface
pressure data from the designed sensor and provide feedback for guiding the
user towards proper sitting postures. We used a liquid state machine and a
logistic regression classifier to construct a spiking neural network for
classifying 15 sitting postures. To allow this system to read our pressure data
into the spiking neurons, we designed an algorithm to encode map-like data into
cosine-rank sparsity data. The experimental results consisting of 15 sitting
postures from 19 participants show that the prediction precision of our SNN is
88.52%.
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