BEGIN:VCALENDAR
VERSION:2.0
PRODID:-//EE - ECPv5.10.0//NONSGML v1.0//EN
CALSCALE:GREGORIAN
METHOD:PUBLISH
X-WR-CALNAME:EE
X-ORIGINAL-URL:https://ee.iisc.ac.in
X-WR-CALDESC:Events for EE
BEGIN:VTIMEZONE
TZID:Asia/Kolkata
BEGIN:STANDARD
TZOFFSETFROM:+0530
TZOFFSETTO:+0530
TZNAME:IST
DTSTART:20220101T000000
END:STANDARD
END:VTIMEZONE
BEGIN:VEVENT
DTSTART;TZID=Asia/Kolkata:20221011T173000
DTEND;TZID=Asia/Kolkata:20221011T183000
DTSTAMP:20260420T213410
CREATED:20221006T052743Z
LAST-MODIFIED:20221006T052956Z
UID:240024-1665509400-1665513000@ee.iisc.ac.in
SUMMARY:Thesis Defence of Mr. Jerrin Thomas Panachakel
DESCRIPTION:Degree Registered:      Ph.D.\n\nDate and Time:            Oct. 11\, 2022 (Tuesday)  12 Noon\n\nVenue:                           MMCR\, Hall No. C 241\, II Floor\, Dept. of Electrical Engineering.\nMS Teams Link:            https://teams.microsoft.com/l/channel/19%3a7nfRrQdIH7fPf5u003TVCBAp18cRM7dyFwv1eqJRGjY1%40thread.tacv2/General?groupId=53beb192-2a2f-4f20-8a0c-dbb67a65f532&tenantId=6f15cd97-f6a7-41e3-b2c5-ad4193976476\n \nTitle: Machine Learning for Decoding Imagined words and Altered State of Consciousness from EEG\n\nAbstract: The thesis explores several architectures for accurately decoding the cognitive activity from EEG recorded during speech imagery and Rajayoga meditation. The major contributions of the thesis are listed below:\n\n\n\n\n\n\n\n\n\n\n\n\n\nNeural Correlates of Phonological Category in Speech Imagery EEG\n\n\nWe have shown that neural correlates of phonological categories exist in the EEG recorded during speech imagery. These correlates lead to significant differences in the mean phase coherence (MPC) values of the EEG across several cortical regions.\nWe have also shown that MPC values can be used for accurately classifying the EEG recorded during speech imagery based on the phonological category of the prompts. The proposed architecture for this task has an accuracy of 84.9%.\n\n\n\nDecoding Imagined Words from EEG\n\n\nOne of the challenges in designing systems for decoding imagined words from EEG is the limited availability of data. We have presented three architectures for decoding imagined words from EEG. All three architectures alleviate this problem of limited availability of data.\nThe transfer learning-based architecture employs MPC and magnitude-squared coherence values along with a ResNet50-based classifier. This architecture achieves an accuracy of 92.8% on a publicly available EEG dataset in classifying speech imagery.\n\nClassification of Altered State of Consciousness from Resting State\n\n\nWe have presented three architectures for classifying the altered state of consciousness during Rajayoga meditation from the resting state.\nBoth CSP-LDA-LSTM (common spatial pattern-linear discriminant analysis-long short-term memory) and SVD-DNN (singular value decomposition-deep neural network) architectures are able to capture subject-invariant features.\nThe best intra-subject accuracy obtained is 98.2% and the best inter-subject accuracy is 96.4%.
URL:https://ee.iisc.ac.in/event/thesis-defence-of-mr-jerrin-thomas-panachakel/
LOCATION:EE\, MMCR
END:VEVENT
END:VCALENDAR