Electroencephalogram (EEG) is an important diagnostic test that physicians use to record brain activity and detect seizures by monitoring the signals. There have been several attempts to detect seizures and abnormalities in EEG sig nals with modern deep learning models to re duce the linical burden. However, they cannot be fairly compared against each other as they were tested in distinct experimental settings.
Also, some of them are not trained in real-time seizure detection tasks, making it hard for on device applications. In this work, for the first time, we extensively compare multiple state-of the-art models and signal feature extractors in a real-time seizure detection framework suitable for real-world application, using various evalu ation metrics including a new one we propose to evaluate more practical aspects of seizure de tection models.