학술논문

FingerFi: An Alpha-numeric Character-based Gesture Recognition using Wi-Fi Sensing
Document Type
Conference
Source
2023 28th Asia Pacific Conference on Communications (APCC) Communications (APCC), 2023 28th Asia Pacific Conference on. :213-218 Nov, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Power, Energy and Industry Applications
Signal Processing and Analysis
Transportation
Analytical models
Transmitters
Fingers
Machine learning
Gesture recognition
Receivers
Robot sensing systems
WiFi sensing
Channel State Information
Gesture Recognition
Finger draw
Alphanumeric Character Recognition
CSI ratio
Machine Learning
Language
Abstract
Gesture recognition based on WiFi channel state information (CSI) has attracted much attention due to its applications in home automation, robotics, healthcare, and so on. Recognition of alphanumeric characters drawn by a finger in a WiFi sensing zone has its own applications, such as nonverbal communication, accessibility, document digitization, and many more. In this paper, we propose a novel model for alphanumeric gesture recognition using CSI-ratio, the variance of the CSI values in the sub-carriers, and different machine learning models like K-nearest neighbors (KNN), Linear Discriminant Analysis (LDA), Decision Tree (DT). Exhaustive experiments are conducted involving different persons to draw alphanumeric characters using fingers and the CSI values are collected using an Intel 5300n network interface card as a receiver and a TP-Link commodity commercially off-the-shelf (COTS) router as a transmitter. The collected values are pre-processed using the CSI ratio method and the variance of the CSI matrix is used as a feature to classify the alphanumeric gestures using different machine learning models like KNN, LDA, and DT. The DT machine learning method outperforms the other two models and the accuracy of recognizing only digits with DT is 98.26% and 96.24% for both alphabets and digits. We also tried to identify the participating person based on the pattern of their gesture and the DT method is able to detect the participant with 99% accuracy.