In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their morphological simi-larity in both amplitude and frequency, making seizure detection systems susceptible to higher false alarm rates. In this work we present the implementation of an artifact detection algorithm based on a minimal number of EEG channels on a parallel ultra-low-power (PULP) embedded platform. The analyses are based on the TUH EEG Artifact Corpus dataset and focus on the temporal electrodes. First, we extract optimal feature models in the frequency domain using an automated machine learning framework, achieving a 93.95% accuracy, with a 0.838 F1 score for a 4 temporal EEG channel setup. The achieved accuracy levels surpass state-o...
3rd International Conference on Pervasive Computing Technologies for Healthcare 2009, London, U.K., ...
Objective: Wearable seizure detection devices could provide more reliable seizure documentation outs...
In this paper, we have developed a low-complexity algorithm for epileptic seizure detection with a h...
We present the implementation of seizure detection algorithms based on a minimal number of EEG chann...
The development of a device for long-term and continuous monitoring of epilepsy is a very challengin...
Extracting information from brain signals in advanced Brain Machine Interfaces (BMI) often requires ...
Low-power wearable technologies offer a promising solution to pervasive epilepsy monitoring by remov...
Epilepsy is a severe neurological disorder that affects about 1% of the world population, and one-th...
Energy efficient processing architectures represent key elements for wearable and implantable medica...
Advances in electroencephalography (EEG) equipment now allow monitoring of people with epilepsy in t...
Epilepsy affects almost 1% of the global population and considerably impacts the quality of life of ...
With the development of machine learning techniques, more and more classification models have been d...
Epilepsy is a chronic neurological disorder affecting approximately 1% of the world’s population, wh...
Artificial intelligence (AI) has a potential for impact in the diagnosis of neurological conditions,...
One percent of the world\u27s population, including over 3 million Americans, suffers from epilepsy....
3rd International Conference on Pervasive Computing Technologies for Healthcare 2009, London, U.K., ...
Objective: Wearable seizure detection devices could provide more reliable seizure documentation outs...
In this paper, we have developed a low-complexity algorithm for epileptic seizure detection with a h...
We present the implementation of seizure detection algorithms based on a minimal number of EEG chann...
The development of a device for long-term and continuous monitoring of epilepsy is a very challengin...
Extracting information from brain signals in advanced Brain Machine Interfaces (BMI) often requires ...
Low-power wearable technologies offer a promising solution to pervasive epilepsy monitoring by remov...
Epilepsy is a severe neurological disorder that affects about 1% of the world population, and one-th...
Energy efficient processing architectures represent key elements for wearable and implantable medica...
Advances in electroencephalography (EEG) equipment now allow monitoring of people with epilepsy in t...
Epilepsy affects almost 1% of the global population and considerably impacts the quality of life of ...
With the development of machine learning techniques, more and more classification models have been d...
Epilepsy is a chronic neurological disorder affecting approximately 1% of the world’s population, wh...
Artificial intelligence (AI) has a potential for impact in the diagnosis of neurological conditions,...
One percent of the world\u27s population, including over 3 million Americans, suffers from epilepsy....
3rd International Conference on Pervasive Computing Technologies for Healthcare 2009, London, U.K., ...
Objective: Wearable seizure detection devices could provide more reliable seizure documentation outs...
In this paper, we have developed a low-complexity algorithm for epileptic seizure detection with a h...