SPCRLGNov 13, 2017

Person Recognition using Smartphones' Accelerometer Data

arXiv:1711.04689v11 citations
Originality Incremental advance
AI Analysis

This provides an incremental, unobtrusive security layer for smartphone users to enhance authentication.

The paper tackled user authentication on smartphones by recognizing individuals using accelerometer data from walking, achieving an accuracy of 0.9679 and AUC of 0.9822.

Smartphones have become quite pervasive in various aspects of our daily lives. They have become important links to a host of important data and applications, which if compromised, can lead to disastrous results. Due to this, today's smartphones are equipped with multiple layers of authentication modules. However, there still lies the need for a viable and unobtrusive layer of security which can perform the task of user authentication using resources which are cost-efficient and widely available on smartphones. In this work, we propose a method to recognize users using data from a phone's embedded accelerometer sensors. Features encapsulating information from both time and frequency domains are extracted from walking data samples, and are used to build a Random Forest ensemble classification model. Based on the experimental results, the resultant model delivers an accuracy of 0.9679 and Area under Curve (AUC) of 0.9822.

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