Injury detection and signal discrimination of EEG by higher order crossings

The high order crossings (HOC) method is introduced for injury detection and EEG signal discrimination applications. Data analysis results show that the HOC-based method is very efficient for detecting possible hypoxic injuries and discriminating signals with different statistical properties.

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