RIDER FATIGUE DETECTION AND SPEED CONTROL USING SMART HELMET
Our Price
₹3,500.00
10000 in stock
Support
Ready to Ship
Description
Electroencephalogram (EEG) is a recording of the electrical activity of the brain from the brain waves produced by the electrical current passing through the nerves during the brain activities. The classification of the EEG signals can be helpful in monitoring patients and identification of the different brain activities. The EEG signals were classified based on the statistical features obtained from the different segments of the EEG signals. The segmented signals were then classified using Neural Network classifier. The Neural Network is a pattern recognition tool that identifies the type of the signals by analyzing the patterns of the features. Epileptic fatigue occur intermittently and unpredictably, mindless seizure detection in EEG cassettes is highly required. The identification of the fatigue based on the features extracted is more efficient compared to the other feature extraction methods employed for the analysis of the signals.
Tags: 2018, Digital Image Processing, Matlab