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(College logo) Project synopsis on ELECTROENCEPHALOGRAPHY Under taken by: Name 1 Roll no. 1 Name 2 Roll no. 2 Name 3 Roll no. 3 Name 4 Roll no. 4 ABSTRACT Electroencephalography (EEG) is an electrophysiological monitoring method to record electrical activity of the brain. It is typically noninvasive, with the electrodes placed along the scalp, although invasive electrodes are sometimes used in specific applications. EEG measures voltage fluctuations resulting from ionic current within the neurons of the brain. In clinical contexts, EEG refers to the recording of the brain's spontaneous electrical activity over a period of time, as recorded from multiple electrodes placed on the scalp. Diagnostic applications generally focus on the spectral content of EEG, that is, the type of neural oscillations (popularly called "brain waves") that can be observed in EEG signals. WORKING PRINCIPLE The working of this project is divided into various stages which are as follows: - Stage 1 - 50 Hz Notch Filter - Stage 2 - Instrumentation Amplifier - Stage 3 - 7Hz High Pass Filter - Stage 4 - 31Hz Low Pass Filter - Stage 5 another 50Hz Notch Filter The above mentioned are all filter stages. Apart from this, a module consist of some other filters and voltage protection circuit is also used. The data received from the sensor and all these stages is then fed into the computer using the Bluetooth (due to 50 Hz noise in wires, Bluetooth module is used). BLOCK DIAGRAM BREADBOARD SCHEMATIC (Only Filters) ABOUT BRAIN WAVES Wave Frequency Associated Mental State Gamma 27 Hz and up Gamma is associated with the formation of ideas, language and memory processing, and various types of learning. Beta 12hz - 27hz Wide awake. This is generally the mental state most people are in during the day and most of their waking lives. Alpha 8hz - 12hz Awake but relaxed and not processing much information. Theta 3hz - 8hz Light sleep or extreme relaxation. Delta 0.2hz - 3hz Deep, dreamless sleep. Delta is the slowest band of brainwaves. COMPONENTS REQUIRED HARDWARE 1. The filters module 2. Capacitors 3. Diodes 4. Connecting Wires 5. Resistors 6. Instrumentation Amplifier 7. Operational amplifier 8. Dry electrodes SOFTWARE 1. 2. Processing Brainwave Visualizer APPLICATIONS Hardware costs are significantly lower than those of most other techniques EEG prevents limited availability of technologists to provide immediate care in high traffic hospitals. EEG sensors can be used in more places than fMRI, SPECT, PET, MRS, or MEG, as these techniques require bulky and immobile equipment. EEG is relatively tolerant of subject movement, unlike most other neuroimaging techniques. There even exist methods for minimizing, and even eliminating movement artifacts in EEG data [ EEG is silent, which allows for better study of the responses to auditory stimuli. EEG does not aggravate claustrophobia, unlike fMRI, PET, MRS, SPECT, and sometimes MEG EEG does not involve exposure to high-intensity (>1 Tesla) magnetic fields, as in some of the other techniques, especially MRI and MRS. These can cause a variety of undesirable issues with the data, and also prohibit use of these techniques with participants that have metal implants in their body, such as metal-containing pacemakers REFERENCES https://en.wikipedia.org/wiki/Electroencephalography http://openeeg.sourceforge.net/doc/ https://people.ece.cornell.edu/land/courses/ece4760/FinalProjects/s2 012/cwm55/cwm55_mj294/ http://www.instructables.com/id/DIY-EEG-and-ECG-Circuit/