Enhancement of Sensor-based User Identification using Data Augmentation Techniques
Author
Abstract

Wearables Security 2022 - Mobile devices such as smartphones are increasingly being used to record personal, delicate, and security information such as images, emails, and payment information due to the growth of wearable computing. It is becoming more vital to employ smartphone sensor-based identification to safeguard this kind of information from unwanted parties. In this study, we propose a sensor-based user identification approach based on individual walking patterns and use the sensors that are pervasively embedded into smartphones to accomplish this. Individuals were identified using a convolutional neural network (CNN). Four data augmentation methods were utilized to produce synthetically more data. These approaches included jittering, scaling, and time-warping. We evaluate the proposed identification model’s accuracy, precision, recall, F1-score, FAR, and FRR utilizing a publicly accessible dataset named the UIWADS dataset. As shown by the experiment findings, the CNN with the timewarping approach operates with very high accuracy in user identification, with the lowest false positive rate of 8.80\% and the most incredible accuracy of 92.7\%.

Year of Publication
2022
Date Published
jan
Publisher
IEEE
Conference Location
Chiang Rai, Thailand
ISBN Number
978-1-66549-510-3
URL
https://ieeexplore.ieee.org/document/9720293/
DOI
10.1109/ECTIDAMTNCON53731.2022.9720293
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