Class-Aware Adaptive Differential Privacy in Deep Learning for Sensor-Based Fall Detection
Joydeb Kumar Sana

TL;DR
This paper introduces a class-aware adaptive differential privacy framework combined with a hybrid deep learning model to enhance privacy-preserving fall detection accuracy in sensor data.
Contribution
It proposes a novel CA-ADP mechanism that dynamically adjusts noise based on class composition, improving privacy-utility trade-offs in fall detection.
Findings
Achieved up to 8.5% F-score improvement over conventional models.
Provided formal $(psilon,elta)$-Differential Privacy guarantees.
Demonstrated consistent outperformance via Wilcoxon signed-rank tests.
Abstract
Fall detection is a critical task in healthcare, particularly for elderly people. Timely fall detection and treatment can prevent severe injuries. Sensor-based activity data can be used to detect fall. However, this data are highly sensitive and raises significant privacy concerns. Existing privacy approaches apply uniform noise across all training samples, which affects the prediction performance. To address this limitation, we propose a Class-Aware Adaptive Differential Privacy (CA-ADP) framework integrated with a hybrid 3D Convolutional Neural Network and Bidirectional Long Short-Term Memory (3D CNN-BiLSTM) architecture. The CA-ADP mechanism dynamically adjusts the magnitude of noise added to gradients based on the class composition of each mini-batch. This process ensures privacy while mitigates performance degradation. We formally analyze the -Differential…
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