학술논문

Inertial Gait-based Person Authentication Using Siamese Networks
Document Type
Conference
Source
2021 International Joint Conference on Neural Networks (IJCNN) Neural Networks (IJCNN), 2021 International Joint Conference on. :1-7 Jul, 2021
Subject
Bioengineering
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Training
Performance evaluation
Deep learning
Wearable computers
Transfer learning
Authentication
Feature extraction
Language
ISSN
2161-4407
Abstract
Gait-based person authentication using smartphones and wearable devices has attracted a lot of attention in recent years due to its unobtrusive nature and the widespread inertial sensors embedded in such devices. While traditional methods of authentication relied on hand-crafted feature extraction tailored for specific conditions, recent deep learning algorithms have been used to automatically discover hidden features and patterns in the raw data. However, current deep learning methods of gait authentication are not portable. They train models to classify a specific user as legitimate and the rest as imposters without being able to change that user to a different one without retraining the model from scratch. Furthermore, they are impractical, since they require a large volume of data for each class to train properly. In this work, we propose using a Siamese Network-based model which (1) Can be trained using only a few samples per subject. (2) Automatically extract features from raw inertial data. (3) Once trained, can authenticate any new user given only one gait instance of that new user. We apply our model to three publicly available datasets and show that it can achieve very promising results. For example, our model achieves 3.42% EER on the world's largest inertial gait dataset (OU-ISIR) after training on raw data of 592 subjects and testing on the raw data of completely different 78 subjects, where each subject provided an average of 5.9 seconds of gait data only. We show some performance analysis on different architectural variations. and finally, we show the ability of our model to generalize to new unseen datasets using transfer learning.