A Hybrid Deep Learning Model for Robust Biometric Authentication from Low-Frame-Rate PPG Signals
Arfina Rahman, Mahesh Banavar

TL;DR
This paper introduces a lightweight hybrid deep learning model that effectively authenticates individuals using low-frame-rate PPG signals from fingertip videos, demonstrating high accuracy and robustness suitable for mobile security.
Contribution
It presents a novel hybrid deep learning framework combining CVT, ConvMixer, and LSTM for robust biometric authentication from low-quality PPG signals.
Findings
Achieved 98% authentication accuracy on 46 subjects.
Demonstrated robustness to noise and physiological variability.
Validated suitability for real-world mobile applications.
Abstract
Photoplethysmography (PPG) signals, which measure changes in blood volume in the skin using light, have recently gained attention in biometric authentication because of their non-invasive acquisition, inherent liveness detection, and suitability for low-cost wearable devices. However, PPG signal quality is challenged by motion artifacts, illumination changes, and inter-subject physiological variability, making robust feature extraction and classification crucial. This study proposes a lightweight and cost-effective biometric authentication framework based on PPG signals extracted from low-frame-rate fingertip videos. The CFIHSR dataset, comprising PPG recordings from 46 subjects at a sampling rate of 14 Hz, is employed for evaluation. The raw PPG signals undergo a standard preprocessing pipeline involving baseline drift removal, motion artifact suppression using Principal Component…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring · ECG Monitoring and Analysis · Biometric Identification and Security
