JOURNAL ARTICLE

FPGA-Based Gesture Recognition with Capacitive Sensor Array using Recurrent Neural Networks

Abstract

This work presents a prototype of an FPGA-based hand motion recognition system using a capacitive sensor array (CSA). The prototype system is being developed as a tool to evaluate upper-limb motor skills for assistive or rehabilitative applications. A light-weight gesture segmentation algorithm was developed that uses summation and moving average filtering of quantized capacitive sensing data to segment motions. The time-series hand motions are then recognized through a recurrent classifier based on long short-term memory (LSTM) neural networks. The classifier model is trained on uni-stroke hand written digit ('0'–'9') samples obtained from four volunteers. A total of 12,000 hand motion samples are collected. The accuracy of 10-fold and leave-one-user-out cross-validation accuracy is respectively 97.5% and 91.3% using a two-layer LSTM network. The LSTM classifier is implemented on a Zynq FPGA device. The experiment demonstrated that the FPGA implementation of the LSTM-based classifier can achieve real-time gesture classification with capacitive sensor data.

Keywords:
Computer science Field-programmable gate array Artificial intelligence Classifier (UML) Capacitive sensing Segmentation Gesture recognition Artificial neural network Recurrent neural network Convolutional neural network Gesture Computer vision Pattern recognition (psychology) Computer hardware

Metrics

8
Cited By
0.66
FWCI (Field Weighted Citation Impact)
1
Refs
0.63
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Muscle activation and electromyography studies
Physical Sciences →  Engineering →  Biomedical Engineering
Stroke Rehabilitation and Recovery
Health Sciences →  Medicine →  Rehabilitation
Hand Gesture Recognition Systems
Physical Sciences →  Computer Science →  Human-Computer Interaction

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