EpiDeNet: An Energy-Efficient Approach to Seizure Detection for Embedded Systems
Thorir Mar Ingolfsson, Upasana Chakraborty, Xiaying Wang, Sandor, Beniczky, Pauline Ducouret, Simone Benatti, Philippe Ryvlin, Andrea, Cossettini, Luca Benini

TL;DR
EpiDeNet is a lightweight, energy-efficient seizure detection network designed for wearable devices, utilizing a novel loss function to handle imbalanced datasets and demonstrating high accuracy and low power consumption on embedded systems.
Contribution
The paper introduces EpiDeNet, a new lightweight neural network and a sensitivity-specificity weighted loss function for effective seizure detection on resource-constrained devices.
Findings
Achieves over 91% seizure detection accuracy on two datasets.
Reduces false positives by three times using a smoothing scheme.
Outperforms ARM Cortex solutions in energy efficiency by 160x.
Abstract
Epilepsy is a prevalent neurological disorder that affects millions of individuals globally, and continuous monitoring coupled with automated seizure detection appears as a necessity for effective patient treatment. To enable long-term care in daily-life conditions, comfortable and smart wearable devices with long battery life are required, which in turn set the demand for resource-constrained and energy-efficient computing solutions. In this context, the development of machine learning algorithms for seizure detection faces the challenge of heavily imbalanced datasets. This paper introduces EpiDeNet, a new lightweight seizure detection network, and Sensitivity-Specificity Weighted Cross-Entropy (SSWCE), a new loss function that incorporates sensitivity and specificity, to address the challenge of heavily unbalanced datasets. The proposed EpiDeNet-SSWCE approach demonstrates the…
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