Titel van de presentatie

Slides:



Advertisements
Similar presentations
ACI/HFES, Baltimore, October 1-3, 2007 Sponsored by US Army Research Office SBIR Phase II: Wearable Physiological Sensor Suite For Early Detection Of Cognitive.
Advertisements

Automated user-centered task selection and input modification Rintse van der Werf Geke Hootsen Anne Vermeer MASLA project Tilburg University.
IntroductionMethods Participants  7 adults with severe motor impairment.  9 adults with no motor impairment.  Each participant was asked to utilize.
HST 583 fMRI DATA ANALYSIS AND ACQUISITION Neural Signal Processing for Functional Neuroimaging Emery N. Brown Neuroscience Statistics Research Laboratory.
Artifact (artefact) reduction in EEG – and a bit of ERP basics CNC, 19 November 2014 Jakob Heinzle Translational Neuromodeling Unit.
Quantifying Generalization from Trial-by-Trial Behavior in Reaching Movement Dan Liu Natural Computation Group Cognitive Science Department, UCSD March,
Soft computing Lecture 6 Introduction to neural networks.
Jacinto C. Nascimento, Member, IEEE, and Jorge S. Marques
6.3 Physiological Computing ISE554 The WWW for eLearning.
 If you have your parent letter, please turn in at my desk (scissors on my desk).  Get out your homework and materials for notes!
Physiological sensors and EEG A short introduction to (neuro-)physiological measurements.
IntroductionMethods Participants  7 adults with severe motor impairment performed EEG recording sessions in their own homes.  9 adults with no motor.
Monitoring Patients 3.3 Health. IT Features A Process is monitored by Sensors Sensors are usually connected to an Interface that is connected to a computer.
Virtual Reality in Brain- Computer Interface Research F. Lee 1, R. Scherer 2, H. Bischof 1, G. Pfurtscheller 2 1) Institute for Computer Graphics and Vision.
Motivation Increase bandwidth of BCI. Reduce training time Use non invasive technique.
The effects of working memory load on negative priming in an N-back task Ewald Neumann Brain-Inspired Cognitive Systems (BICS) July, 2010.
Module 16 Emotion.
Using Electroencephalography (EEG) for User State / Task Classification in HCI Research Desney Tan Microsoft Research In collaboration with: Johnny Lee.
MEASURING PHYSICAL ACTIVITY Week 3. What you need to know The difference between subjective and objective methods The difference between subjective and.
Give examples of the way that virtual reality can be used in Psychology.
MTA EXAM Software Testing Fundamentals : OBJECTIVE 6 Automate Software Testing.
Speaker: Sun Peng Identifying Drug (Cocaine) Intake Events from Acute Physiological Response in the Presence of Free-living Physical Activity.
TRAINING PACKAGE The User Action Framework Reliability Study July 1999.
IPSIHAND AN EEG BASED BRAIN COMPUTER INTERFACE FOR MOTOR REHABILITATION.
BRAIN GATE TECHNOLOGY.. Brain gate is a brain implant system developed by the bio-tech company Cyberkinetics in 2003 in conjunction with the Department.
Observational Methods Think Aloud Cooperative evaluation Protocol analysis Automated analysis Post-task walkthroughs.
Topographic mapping on memory test of verbal/spatial information assessed by event related potentials (ERPs) Petrini L¹², De Pascalis V², Arendt-Nielsen.
Event-Related Potentials Chap2. Ten Simple Rules for Designing ERP Experiments (2/2) 임원진
Electrophysiology. Neurons are Electrical Remember that Neurons have electrically charged membranes they also rapidly discharge and recharge those membranes.
Human Computer Interaction
SIE 515 Design Evaluation Lecture 7.
Components Studied in Literature Discussion and Conclusion
RESTORE MENTAL STATUS with BIO FEEDBACK (RMS BFB-7)
User-centred system design process
Brain operated wheelchair
[Ran Manor and Amir B.Geva] Yehu Sapir Outlines Review
Attention Components and Creative Potential: An ERP Exploration
THE ADOPTION OF PHYSIOLOGICAL MEASURES AS AN EVALUATION TOOL IN UX
CCET Discovery Across Texas Data Quality Plan - Overview
Adaptive Automation NINA project
Neurofeedback of beta frequencies:
Agenda Motivation & Goals „Out-of-the-Loop“-Phenomenon MINIMA Concept
Emotion.
When to engage in interaction – and how
Designing Information Systems Notes
INCLUSIVE VALUE CHAIN COLLABORATION
What do object-sensitive regions show tuning to?
Chapter 12: Automated data collection methods
المبادئ والهياكل الإدارية العليا والإدارية
Hu Li Moments for Low Resolution Thermal Face Recognition
Identifying Confusion from Eye-Tracking Data
Multi-Sensor Soft-Computing System for Driver Drowsiness Detection
Phd Candidate Computational Physiology Lab University of Houston
Non-Intrusive Monitoring of Drowsiness Using Eye Movement and Blinking
Experimental Design in Functional Neuroimaging
INITIAL THOUGHTS: (5 min) Nervous System
Machine Learning for Visual Scene Classification with EEG Data
Steps in the Research Process
Learning to Classify Biomedical Signals
Neuro-Computing Lecture 2 Single-Layer Perceptrons
Emotion notes 13-2 (Objectives 2-7)
Wallis, JD Helen Wills Neuroscience Institute UC, Berkeley
The Berlin Brain-Computer Interface: Machine Learning-Based Detection of User Specific Brain States Umar Farooq.
Experimental Evaluation
Measuring and Improving the Quality of Haptic-Audio-Visual Experience
Module 16 Emotion.
A virtual patient sandbox for medical education
A Low-Cost EEG System-Based Hybrid Brain-Computer Interface for Humanoid Robot Navigation and Recognition Bongjae Choi, Sungho Jo Presented by Megan Fillion.
If you have your parent letter, please turn in at my desk (scissors on my desk). Get out your homework and materials for notes!
Mental workload The ratio between a task’s demand and the persons’s capacity Too high workload leads to stress, reduced performance, errors Too low workload.
Presentation transcript:

Titel van de presentatie 16-9-2019 16:44 A tool to estimate STRESS (MENTAl state) in real time Anne-Marie Brouwer Maarten Hogervorst Rob van de Pijpekamp Jan van Erp

BACKgrond: estimating mental state using neurophysiology Titel van de presentatie 16-9-2019 16:44 BACKgrond: estimating mental state using neurophysiology Estimating mental (affective or cognitive) state of one individual at one moment in time (Neuro)physiological effects of mental processes and not caused by confounds EEG patterns looks different for difficult than easy scenarios, because: mental stress differs or: .. more movements, causing motion artefacts .. more visual information processing, leading to more active visual cortex .. Almost 10 years ago, we started working on bci: controlling computers.. From there we moved to monitoring mental state from bio signals. I will shortly describe a study that shows how we investigate the ‘real’ relation between neurophysio and mental processes, so that we know which variables actually carry information about the mental state under study, and then I describe an approach, or tool, that may be useful for out of the lab situations and is built on the methods used in the lab study.

LAB APPROACH: N-Back taSk Titel van de presentatie 16-9-2019 16:44 LAB APPROACH: N-Back taSk Difficulty varies across conditions while visual input and movement remain the same ‘Is the presented letter a target or not?’ 0-1-2 back in 2- minute blocks 500 ms 2000 ms 0-back-target 1-back-target 2-back-target

Titel van de presentatie 16-9-2019 16:44 classification Individually trained model (support vector machine) Training on first part of data, testing on last (unseen) part of data

Relative sensitivity of different measures Titel van de presentatie 16-9-2019 16:44 Relative sensitivity of different measures 2-vs-0-back, 2 minutes of data EEG: Most measures around 85% correct One electrode suffices Physiology: Skin conductance, ECG around significance level (60%) Breathing frequency: 68% Eye: Blinkduration: 50%, blink rate: 63%, Pupilsize: 75%

Titel van de presentatie 16-9-2019 16:44 CombinatiON EEG: 85% Physiology: 75% Eye: 75% All sensors: 91% Hogervorst, Brouwer and van Erp JBF (2014) Combining and comparing EEG, peripheral physiology and eye-related measures for the assessment of mental workload. Frontiers in Neuroscience 8:322

Titel van de presentatie 16-9-2019 16:44 IF we want to apply this.. Generalization across situations Generalization across subjects (training data) Deal with movements and confounds Idea of potential variables of interest

Titel van de presentatie 16-9-2019 16:44 ESTIMERE Tool to estimate mental state in real time, out of the lab No worries about confounds: ‘get all information that is possibly out there’ Automatically adapts to changing situation Met Estimere willen we nu real time en in praktijksituatie mental state inschatten. Praktijksituaties: altijd sprake van confounds. Die kun je echter ook als informatiebron behandelen. Als beweging en werklast voor een bepaald scenario altijd gecorreleerd zijn kun je daar gebruik van maken. Waarbij dan de vraag is of je die beweging het meest handig via ruis in EEGkanalen kunt meten of op een andere manier.

Titel van de presentatie 16-9-2019 16:44 CURRENT setup Pupilsize Blinkfrequency Eyelid opening Heart rate Estimated stress Classifier mio Keyboard hits mouse movements Match? Ground truth: Subjectively experienced stress level

Titel van de presentatie 16-9-2019 16:44 CURRENT setup

Titel van de presentatie 16-9-2019 16:44 Flexible system Easy to adapt: Type of mental state Sensors Variables Type of classification model Selection of retraining data Frequency of the probe question Another type of ground truth …

Titel van de presentatie 16-9-2019 16:44 tool To monitor users for adaptive automation or evaluation For research: How well can we estimate certain states In certain situations? Which sensors and variables are most valuable? How well does it generalize over persons and situations? Tool to monitor users for adaptive automation or evaluation

Titel van de presentatie 16-9-2019 16:44 Lab -> real life Pick an ideal mental state monitoring case: Few body movements Added value: patients that do not/cannot convey information well in other ways Research in the same context as the application 1.12 Non-Emotional Emotional Few body movements, at least at time of measurement/interpretation Omzeilen van generalisatie issue: je traint het model met data zo dicht mogelijk bij de situatie en persoon ‘of interest’ 1.08 R to R interval 1.04 1.00 Brouwer, Hogervorst, Reuderink, van der Werf, van Erp (2015) Physiological signals distinguish between reading emotional and non-emotional sections in a novel. Brain-Computer Interfaces, 1-14. 20 40 60 80 100 120 Page number