Machine Learning for Visual Scene Classification with EEG Data

Slides:



Advertisements
Similar presentations
Electroencephalogram (EEG) and Event Related Potentials (ERP) Lucy J. Troup 28 th January 2008 CSU Symposium on Imaging.
Advertisements

Brain-computer interfaces: classifying imaginary movements and effects of tDCS Iulia Comşa MRes Computational Neuroscience and Cognitive Robotics Supervisors:
Visualization of dynamic power and synchrony changes in high density EEG A. Alba 1, T. Harmony2, J.L. Marroquín 2, E. Arce 1 1 Facultad de Ciencias, UASLP.
Electrophysiology. Electroencephalography Electrical potential is usually measured at many sites on the head surface More is sometimes better.
HST 583 fMRI DATA ANALYSIS AND ACQUISITION Neural Signal Processing for Functional Neuroimaging Emery N. Brown Neuroscience Statistics Research Laboratory.
Electroencephalography The field generated by a patch of cortex can be modeled as a single equivalent dipolar current source with some orientation (assumed.
Electroencephalography and the Event-Related Potential
Inferring individual perceptual experience from MEG: Robust statistics approach Andrey Zhdanov 1,4, Talma Hendler 1,2, Leslie Ungerleider 3, Nathan Intrator.
Segmentación de mapas de amplitud y sincronía para el estudio de tareas cognitivas Alfonso Alba 1, José Luis Marroquín 2, Edgar Arce 1 1 Facultad de Ciencias,
1 Affective Learning with an EEG Approach Xiaowei Li School of Information Science and Engineering, Lanzhou University, Lanzhou, China
Jeff Howbert Introduction to Machine Learning Winter Machine Learning Feature Creation and Selection.
Closed and Open Electrical Fields
Multiclass object recognition
ERP DATA ACQUISITION & PREPROCESSING EEG Acquisition: 256 scalp sites; vertex recording reference (Geodesic Sensor Net)..01 Hz to 100 Hz analogue filter;
Analysis of Temporal Lobe Paroxysmal Events Using Independent Component Analysis Jonathan J. Halford MD Department of Neuroscience, Medical University.
1. 2 Abstract - Two experimental paradigms : - EEG-based system that is able to detect high mental workload in drivers operating under real traffic condition.
UNIVERSITY OF CRETE DEPARTMENT OF MEDICINE INTRAPARTMENTAL GRATUATE PROGRAMM IN THE BRAIN AND MIND SCIENCES YEAR SUBJECT: CERBRAL CORTEX PROFESSOR:
Functional Brain Signal Processing: EEG & fMRI Lesson 4
Abstract Automatic detection of sleep state is important to enhance the quick diagnostic of sleep conditions. The analysis of EEGs is a difficult time-consuming.
Acknowledgement Work supported by NINDS (grant NS39845), NIMH (grants MH42900 and 19116) and the Human Frontier Science Program Methods Fullhead.
Principal components analysis (PCA) as a tool for identifying EEG frequency bands: I. Methodological considerations and preliminary findings Jürgen Kayser,
Abstract Automatic detection of sleep state is an important queue in accurate detection of sleep conditions. The analysis of EEGs is a difficult time-consuming.
Signal Processing: EEG to ERP A Darren Parker Presentation.
RESEARCH QUESTIONS Might having to lie still without moving, or having to lie down rather than sit up, change the pattern of neural activity in very young.
Cortical Event-Realated Potentials to Auditory Stimuli 초고주파 및 항공전자통신 연구실 석사 2 차 : 임의선 (林宜宣) Lin Yixuan
The Effect of Retro-Cueing on an ERP Marker of VSTM Maintenance Alexandra M Murray, Bo-Cheng Kuo, Mark G Stokes, Anna C Nobre Brain & Cognition Laboratory,
Electrophysiology. Neurons are Electrical Remember that Neurons have electrically charged membranes they also rapidly discharge and recharge those membranes.
Methods for Dummies M/EEG Analysis: Contrasts, Inferences and Source Localisation Diana Omigie Stjepana Kovac.
Descriptive Statistics The means for all but the C 3 features exhibit a significant difference between both classes. On the other hand, the variances for.
Effect of cognitive-behavioral therapy on brain activity related to stimulus-response conflict processing in Gilles de la Tourette Syndrome Lori Baltazar1,4.
Variations in Oscillatory Power During Rule Switching
[Ran Manor and Amir B.Geva] Yehu Sapir Outlines Review
Attention Components and Creative Potential: An ERP Exploration
Brain Electrophysiological Signal Processing: Postprocessing
Verifiability and Action verb Processing: An ERP Investigation
A High-Density EEG investigation of the Misinformation Effect: Differentiating between True and False Memories John E. Kiat & Robert F. Belli Department.
Automatic Sleep Stage Classification using a Neural Network Algorithm
Fabien LOTTE, Cuntai GUAN Brain-Computer Interfaces laboratory
Department of Computer Science
Machine Learning Feature Creation and Selection
Baselining PMU Data to Find Patterns and Anomalies
Optimizing Channel Selection for Seizure Detection
Word Imagery Effects on Explicit and Implicit Memory
Volume 69, Issue 3, Pages (February 2011)
Toward More Versatile and Intuitive Cortical Brain–Machine Interfaces
Volume 58, Issue 3, Pages (May 2008)
AN ANALYSIS OF TWO COMMON REFERENCE POINTS FOR EEGS
Perceptual Echoes at 10 Hz in the Human Brain
Volume 26, Issue 14, Pages (July 2016)
Volume 83, Issue 3, Pages (August 2014)
Volume 27, Issue 2, Pages (January 2017)
E. Olofsen, J.W. Sleigh, A. Dahan  British Journal of Anaesthesia 
Dynamic Causal Modelling for M/EEG
feature extraction methods for EEG EVENT DETECTION
Roman F. Loonis, Scott L. Brincat, Evan G. Antzoulatos, Earl K. Miller 
Volume 49, Issue 3, Pages (February 2006)
Gamma and the Coordination of Spiking Activity in Early Visual Cortex
Dynamic Coding for Cognitive Control in Prefrontal Cortex
Volume 28, Issue 5, Pages e3 (March 2018)
Slow-γ Rhythms Coordinate Cingulate Cortical Responses to Hippocampal Sharp-Wave Ripples during Wakefulness  Miguel Remondes, Matthew A. Wilson  Cell.
Coding of Natural Scenes in Primary Visual Cortex
A Dissertation Proposal by: Vinit Shah
Xiaomo Chen, Marc Zirnsak, Tirin Moore  Cell Reports 
Dynamics of Eye-Position Signals in the Dorsal Visual System
Timing, Timing, Timing: Fast Decoding of Object Information from Intracranial Field Potentials in Human Visual Cortex  Hesheng Liu, Yigal Agam, Joseph.
Ilan Lampl, Iva Reichova, David Ferster  Neuron 
EECS Department, UC Berkeley
Simon Hanslmayr, Jonas Matuschek, Marie-Christin Fellner 
Pairing-Induced Changes of Orientation Maps in Cat Visual Cortex
Adrian E. Gonzalez , David Parra Department of Computer Science
Presentation transcript:

Machine Learning for Visual Scene Classification with EEG Data Hammad Khan1, Kush Mittal1, Cybelle Smith2 (Mentor) 1Department of Computer Science, University of Illinois, Urbana-Champaign, 2Department of Psychology, University of Illinois, Urbana-Champaign Introduction In much experimental research using electroencephalography (EEG), hypotheses are formed about the mean amplitude of the EEG signal over predetermined time windows and scalp regions. However, there is also a need for exploratory analyses that might identify new dependent measures (i.e. over new time windows or regions of interest) that correlate well with some aspect of cognition. The goal of our current set of analyses is to: Identify new potential dependent measures relevant to visual scene recognition using a data driven exploratory analysis. Obtain a metric of how well machine learning algorithms can classify single trial data along several dimensions: visual field to which the image was presented, prototypicality of the image, and the type of scene depicted in the image (e.g. beach vs. office). In this way we can also get a metric of how much information can be extracted from select features of the data for potential scientific or BCI applications. Classification Algorithm: Lasso regression, 10- fold cross validation used to select optimal lambda. Cross-validation: Additional outer loop of 10- fold cross validation used to assess accuracy of model on held out dataset. Findings Scalp Localization of Representative Features: Scalp map represents electrode channel frequencies of features selected from regression model for classifying scenes into left and right visual fields. Time Domain Histogram of Representative Features: Features characterizing visual processing tend to peak around 100-200ms after stimulus as shown in the figure, similar to latency of N1 effect in ERP waveform. The features selected by the model peak at 100ms after the event in contrast with the scalp plot differences shown above which peak later on in the epoch. The figure shows the number of features selected by the regression algorithm in 100ms time intervals. The features localize towards the back of the head indicating involvement of the visual cortex of the brain. Methods A logistic regression algorithm is used to train a model to categorize scene classes and differentiate between left and right visual fields. EEG Dataset: The EEG dataset analyzed was obtained from the Cognition and Brain Lab at the University of Illinois from the recordings of one subject on 26 electrode channels. Pre-processing: Raw continuous EEG waveforms converted into epoched data intervals (-200- 1000ms). Data baselined and low pass filtered (30 Hz cutoff) prior to feature extraction. Artifact Rejection: Trials with eye blinks, eye movements, or other artifacts were removed prior to analysis. EEG Analysis: Feature set = z-score of mean EEG for each channel over intervals of 200ms (step size: 40ms) and 40ms (step size: 12ms) from 0 to 1000ms Scene Categories: Each scene was presented for 200ms from a set of good exemplar scene types as shown above. The histogram shows the number of representative features selected by the regression model at times after the event. The scalp plots show the difference between left and right visual fields of the ERP waveform at 100ms intervals after the event. Results & Conclusions Model Classification Accuracy: Resulting model has an accuracy of 82.38% for optimal lambda and 80.33% for lambda within one standard error. Conclusion: Selected feature distribution over the scalp was able to isolate class distinction- relevant activity in a way that is even clearer than plotting scalp distribution wave between conditions. This suggests similar machine learning and regularized regression techniques may serve as a useful tool for better understanding high-dimensional, low signal-to- noise ratio data like EEG. The figure shows the ERP waveform of the EEG recording on the LLOc (left) and RLOc (right) channels for left (red) and right (black) visual events. Citations Delorme A & Makeig S (2004) EEGLAB: an open source toolbox for analysis of single-time trial EEG dynamics. Journal of Neuroscience Methods 134:9-21 The figure on the left shows the positioning of the electrodes on the scalp. The LLOc and RLOc channels described above are highlighted.