We propose a new algorithm for detecting epileptic seizures. Our algorithm first extracts three features, namely mean amplitude, line length, and local binary patterns that are fed to an ensemble of classifiers using hyperdimensional (HD) computing. These features are embedded into prototype vectors representing ictal (during seizures) and interictal (between seizures) brain states are constructed. These vectors can be computed at different spatial scales ranging from a single electrode up to many electrodes. This flexibility allows our algorithm to identify the electrodes that discriminate best between ictal and interictal brain states. We assess our algorithm on the SWEC-ETHZ iEEG dataset that includes 99 short-Time iEEG seizures recorded...
Epilepsy is a severe neurological disorder that affects about 1% of the world population, and one-th...
Detecting seizure using brain neuroactivations recorded by intracranial electroencephalogram (iEEG) ...
International audienceThis paper proposes a patient-specific supervised classification algorithm to ...
We propose a new algorithm for detecting epileptic seizures. Our algorithm first extracts three feat...
We propose an intracranial electroencephalography (iEEG) based algorithm for detecting epileptic sei...
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...
This paper presents an efficient binarized algorithm for both learning and classification of human e...
Abstract An automatic seizure detection method from highresolution intracranial-EEG (iEEG) signals...
Long-term monitoring of patients with epilepsy presents a challenging problem from the engineering p...
Hyperdimensional (HD) computing is a form of brain-inspired computing which can be applied to numero...
A central challenge in today's care of epilepsy patients is that the disease dynamics are severely u...
Abstract A novel low-complexity method of detecting epileptic seizures from intracranial encephalog...
We propose Laelaps, an energy-efficient and fast learning algorithm with no false alarms for epilept...
Wearable and unobtrusive monitoring and prediction of epileptic seizures has the potential to signif...
Epilepsy is a severe neurological disorder that affects about 1% of the world population, and one-th...
Detecting seizure using brain neuroactivations recorded by intracranial electroencephalogram (iEEG) ...
International audienceThis paper proposes a patient-specific supervised classification algorithm to ...
We propose a new algorithm for detecting epileptic seizures. Our algorithm first extracts three feat...
We propose an intracranial electroencephalography (iEEG) based algorithm for detecting epileptic sei...
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...
This paper presents an efficient binarized algorithm for both learning and classification of human e...
Abstract An automatic seizure detection method from highresolution intracranial-EEG (iEEG) signals...
Long-term monitoring of patients with epilepsy presents a challenging problem from the engineering p...
Hyperdimensional (HD) computing is a form of brain-inspired computing which can be applied to numero...
A central challenge in today's care of epilepsy patients is that the disease dynamics are severely u...
Abstract A novel low-complexity method of detecting epileptic seizures from intracranial encephalog...
We propose Laelaps, an energy-efficient and fast learning algorithm with no false alarms for epilept...
Wearable and unobtrusive monitoring and prediction of epileptic seizures has the potential to signif...
Epilepsy is a severe neurological disorder that affects about 1% of the world population, and one-th...
Detecting seizure using brain neuroactivations recorded by intracranial electroencephalogram (iEEG) ...
International audienceThis paper proposes a patient-specific supervised classification algorithm to ...