Privacy Preserving Release of Mobile Sensor Data

05/13/2022
by   Rahat Masood, et al.
0

Sensors embedded in mobile smart devices can monitor users' activity with high accuracy to provide a variety of services to end-users ranging from precise geolocation, health monitoring, and handwritten word recognition. However, this involves the risk of accessing and potentially disclosing sensitive information of individuals to the apps that may lead to privacy breaches. In this paper, we aim to minimize privacy leakages that may lead to user identification on mobile devices through user tracking and distinguishability while preserving the functionality of apps and services. We propose a privacy-preserving mechanism that effectively handles the sensor data fluctuations (e.g., inconsistent sensor readings while walking, sitting, and running at different times) by formulating the data as time-series modeling and forecasting. The proposed mechanism also uses the notion of correlated noise-series against noise filtering attacks from an adversary, which aims to filter out the noise from the perturbed data to re-identify the original data. Unlike existing solutions, our mechanism keeps running in isolation without the interaction of a user or a service provider. We perform rigorous experiments on benchmark datasets and show that our proposed mechanism limits user tracking and distinguishability threats to a significant extent compared to the original data while maintaining a reasonable level of utility of functionalities. In general, we show that our obfuscation mechanism reduces the user trackability threat by 60% across all the datasets while maintaining the utility loss below 0.5 Mean Absolute Error (MAE). We also observe that our mechanism is more effective in large datasets. For example, with the Swipes dataset, the distinguishability risk is reduced by 60% on average while the utility loss is below 0.5 MAE.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/14/2019

Privacy and Utility Preserving Sensor-Data Transformations

Sensitive inferences and user re-identification are major threats to pri...
research
03/23/2020

DYSAN: Dynamically sanitizing motion sensor data against sensitive inferences through adversarial networks

With the widespread adoption of the quantified self movement, an increas...
research
08/09/2022

Privacy-Aware Adversarial Network in Human Mobility Prediction

As mobile devices and location-based services are increasingly developed...
research
02/21/2018

Protecting Sensory Data against Sensitive Inferences

There is growing concern about how personal data are used when users gra...
research
11/10/2019

Prospect Theoretic Analysis of Privacy-Preserving Mechanism

We study a problem of privacy-preserving mechanism design. A data collec...
research
08/13/2018

Mitigating Location Privacy Attacks on Mobile Devices using Dynamic App Sandboxing

We present the design, implementation and evaluation of a system, called...
research
10/18/2017

Replacement AutoEncoder: A Privacy-Preserving Algorithm for Sensory Data Analysis

An increasing number of sensors on mobile, Internet of things (IoT), and...

Please sign up or login with your details

Forgot password? Click here to reset