CFD-HAR: User-controllable Privacy through Conditional Feature Disentanglement
Alex Gn, Fan Li, S Kuniyilh, Ada Axan

TL;DR
This paper introduces CFD-HAR, a feature disentanglement method for user-controlled privacy in human activity recognition on IoT devices, balancing privacy, data efficiency, and robustness.
Contribution
It presents a novel feature disentanglement approach for privacy control in HAR, comparing it with autoencoder-based few-shot learning and analyzing security and deployment aspects.
Findings
CFD-HAR enables explicit, tunable privacy controls.
Autoencoder-based HAR is more label-efficient and adaptable.
Neither method fully meets all IoT HAR system requirements.
Abstract
Modern wearable and mobile devices are equipped with inertial measurement units (IMUs). Human Activity Recognition (HAR) applications running on such devices use machine-learning-based, data-driven techniques that leverage such sensor data. However, sensor-data-driven HAR deployments face two critical challenges: protecting sensitive user information embedded in sensor data in accordance with users' privacy preferences and maintaining high recognition performance with limited labeled samples. This paper proposes a technique for user-controllable privacy through feature disentanglement-based representation learning at the granular level for dynamic privacy filtering. We also compare the efficacy of our technique against few-shot HAR using autoencoder-based representation learning. We analyze their architectural designs, learning objectives, privacy guarantees, data efficiency, and…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Gait Recognition and Analysis · IoT and Edge/Fog Computing
