arXiv Analytics

Sign in

arXiv:1912.03760 [cs.LG]AbstractReferencesReviewsResources

A Convolutional Neural Network for User Identification based on Motion Sensors

Cezara Benegui, Radu Tudor Ionescu

Published 2019-12-08Version 1

In this paper, we propose a deep learning approach for smartphone user identification based on analyzing motion signals recorded by the accelerometer and the gyroscope, during a single tap gesture performed by the user on the screen. We transform the discrete 3-axis signals from the motion sensors into a gray-scale image representation which is provided as input to a convolutional neural network (CNN) that is pre-trained for multi-class user classification. In the pre-training stage, we benefit from different users and multiple samples per user. After pre-training, we use our CNN as feature extractor, generating an embedding associated to each single tap on the screen. The resulting embeddings are used to train a Support Vector Machines (SVM) model in a few-shot user identification setting, i.e. requiring only 20 taps on the screen during the registration phase. We compare our identification system based on CNN features with two baseline systems, one that employs handcrafted features and another that employs recurrent neural network (RNN) features. All systems are based on the same classifier, namely SVM. To pre-train the CNN and the RNN models for multi-class user classification, we use a different set of users than the set used for few-shot user identification, ensuring a realistic scenario. The empirical results demonstrate that our CNN model yields a top accuracy of 89.75% in multi-class user classification and a top accuracy of 96.72% in few-shot user identification. In conclusion, we believe that our system is ready for practical use, having a better generalization capacity than both baselines.

Related articles: Most relevant | Search more
arXiv:1905.11669 [cs.LG] (Published 2019-05-28)
CompactNet: Platform-Aware Automatic Optimization for Convolutional Neural Networks
arXiv:2005.13171 [cs.LG] (Published 2020-05-27)
Precisely Predicting Acute Kidney Injury with Convolutional Neural Network Based on Electronic Health Record Data
arXiv:1912.03789 [cs.LG] (Published 2019-12-08)
Feature Engineering Combined with 1 D Convolutional Neural Network for Improved Mortality Prediction