This paper presents the design and evaluation of an energy-efficient seizure detection system for emerging EEG-based monitoring applications, such as non-convulsive epileptic seizure detection and Freezing-of-Gait (FoG) detection. As part of the BrainWave system, a BrainWave processor for flexible and energy-efficient signal processing is designed. The key system design parameters, including algorithmic optimizations, feature offloading and near-Threshold computing are evaluated in this work. The BrainWave processor is evaluated while executing a complex EEG-based epileptic seizure detection algorithm. In a 28-nm FDSOI technology, 325 μJ per classification at 0.9 V and 290 μJ at 0.5 V are achieved using an optimized software-only implementa...
Continuous on-scalp EEG monitoring provides a non-invasive means to detect the onset of seizures in ...
Closed-loop neurostimulation systems have emerged as a prominent method for treating seizures. Howev...
Variation in human brains creates difficulty in implementing electroencephalography (EEG) into unive...
This paper presents the design and evaluation of an energy-efficient seizure detection system for em...
We present a systematic evaluation and optimization of a complex bio-medical signal processing appli...
Epilepsy is one of the most common serious brain disorders affecting 1% of the world population. Epi...
Energy efficient processing architectures represent key elements for wearable and implantable medica...
open3noUltra-low power operation and extreme energy efficiency are strong requirements for a number ...
Extracting information from brain signals in advanced Brain Machine Interfaces (BMI) often requires ...
Epilepsy affects over three million Americans of all ages. Despite recent advances, more than 20% of...
Long-term monitoring of epilepsy patients requires low-power systems that can record and transmit el...
We present the implementation of seizure detection algorithms based on a minimal number of EEG chann...
In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their mo...
Objectives: The weight and volume of battery-powered wireless electroencephalography (EEG) systems ...
Continuous on-scalp EEG monitoring provides a non-invasive means to detect the onset of seizures in ...
Closed-loop neurostimulation systems have emerged as a prominent method for treating seizures. Howev...
Variation in human brains creates difficulty in implementing electroencephalography (EEG) into unive...
This paper presents the design and evaluation of an energy-efficient seizure detection system for em...
We present a systematic evaluation and optimization of a complex bio-medical signal processing appli...
Epilepsy is one of the most common serious brain disorders affecting 1% of the world population. Epi...
Energy efficient processing architectures represent key elements for wearable and implantable medica...
open3noUltra-low power operation and extreme energy efficiency are strong requirements for a number ...
Extracting information from brain signals in advanced Brain Machine Interfaces (BMI) often requires ...
Epilepsy affects over three million Americans of all ages. Despite recent advances, more than 20% of...
Long-term monitoring of epilepsy patients requires low-power systems that can record and transmit el...
We present the implementation of seizure detection algorithms based on a minimal number of EEG chann...
In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their mo...
Objectives: The weight and volume of battery-powered wireless electroencephalography (EEG) systems ...
Continuous on-scalp EEG monitoring provides a non-invasive means to detect the onset of seizures in ...
Closed-loop neurostimulation systems have emerged as a prominent method for treating seizures. Howev...
Variation in human brains creates difficulty in implementing electroencephalography (EEG) into unive...