Abstract An automatic seizure detection method from highresolution intracranial-EEG (iEEG) signals is presented to minimize the computational complexity and realize real-time accurate seizure detection for biomedical implants. Complex signal processing on a large amount of iEEG signals captured via several electrodes is a crucial impediment in seizure detection when it comes to power consumption and real-time processing. Therefore, a subject-customized channel selection method correlated to a feature ranking unit is proposed to improve the computation efficiency and seizure detection accuracy by reducing the dimension of extracted features as well as the electrode channels. Nine popular time-domain features are extracted and ranked to con...
One percent of the world\u27s population, including over 3 million Americans, suffers from epilepsy....
OBJECTIVE: A novel patient-specific seizure detection algorithm is presented. As the spatial distrib...
Abstract: Low-power circuit design techniques have enabled the possibility of integrating signal pro...
Detecting seizure using brain neuroactivations recorded by intracranial electroencephalogram (iEEG) ...
Abstract A novel low-complexity method of detecting epileptic seizures from intracranial encephalog...
We propose an intracranial electroencephalography (iEEG) based algorithm for detecting epileptic sei...
We propose a new algorithm for detecting epileptic seizures. Our algorithm first extracts three feat...
Implantable high-accuracy, and low-power seizure detection is a challenge. In this paper, we propose...
We propose Laelaps, an energy-efficient and fast learning algorithm with no false alarms for epilept...
We develop a fast learning algorithm combining symbolic dynamics and brain-inspired hyperdimensional...
OBJECTIVE We develop a fast learning algorithm combining symbolic dynamics and brain-inspired hyp...
International audienceSeizure detection is a routine process in epilepsy units requiring manual inte...
This paper presents an efficient binarized algorithm for both learning and classification of human e...
In this paper, we have developed a low-complexity algorithm for epileptic seizure detection with a h...
Abstract Early and accurate detection of epileptic seizures is an extremely important therapeutic g...
One percent of the world\u27s population, including over 3 million Americans, suffers from epilepsy....
OBJECTIVE: A novel patient-specific seizure detection algorithm is presented. As the spatial distrib...
Abstract: Low-power circuit design techniques have enabled the possibility of integrating signal pro...
Detecting seizure using brain neuroactivations recorded by intracranial electroencephalogram (iEEG) ...
Abstract A novel low-complexity method of detecting epileptic seizures from intracranial encephalog...
We propose an intracranial electroencephalography (iEEG) based algorithm for detecting epileptic sei...
We propose a new algorithm for detecting epileptic seizures. Our algorithm first extracts three feat...
Implantable high-accuracy, and low-power seizure detection is a challenge. In this paper, we propose...
We propose Laelaps, an energy-efficient and fast learning algorithm with no false alarms for epilept...
We develop a fast learning algorithm combining symbolic dynamics and brain-inspired hyperdimensional...
OBJECTIVE We develop a fast learning algorithm combining symbolic dynamics and brain-inspired hyp...
International audienceSeizure detection is a routine process in epilepsy units requiring manual inte...
This paper presents an efficient binarized algorithm for both learning and classification of human e...
In this paper, we have developed a low-complexity algorithm for epileptic seizure detection with a h...
Abstract Early and accurate detection of epileptic seizures is an extremely important therapeutic g...
One percent of the world\u27s population, including over 3 million Americans, suffers from epilepsy....
OBJECTIVE: A novel patient-specific seizure detection algorithm is presented. As the spatial distrib...
Abstract: Low-power circuit design techniques have enabled the possibility of integrating signal pro...