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NATHAN DE LA CRUZ SUPERVISOR: MEHRDAD GHAZIASGAR MENTORS: DANE BROWN AND DIEGO MUSHFIELDT Lie Detection System Using Facial Expressions
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Introduction Background Research has found: More than 80% of women admit to occasionally telling “harmless half truths”. 31% of people admit to lying on their CV’s. 60% of people lie at least once during a 10 minute conversation and on average tell 2 to 3 lies.
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Ways to detect Lies Study body language
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Ways to detect Lies Studying Eye movements LIETRUTH
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Ways to detect Lies Observing micro-expressions
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User Requirements The user requires the system to accurately tell if a person is or is not lying. The user should be able to initialize the software. The user will ask the subject a series of questions. The software should be monitoring the subjects’ response. At any time the user should be able to stop the processing and get a result.
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Requirements Analysis What Is Needed? A Web Camera A PC with Open Computer Vision (OpenCV) libraries Installed.
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Requirements Analysis Complete Analysis Process Initialization (Clicking Some Button) Capturing Video In Real Time & Detecting The Face Pre-processing Frames Processing Frames Using Optical Flow Process Termination (Clicking Some Button) Displaying Information to User
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Requirements Analysis Capturing Video In Real Time & Detecting The Face
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Requirements Analysis Pre-processing Frames GreyscaleCropping
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Requirements Analysis Processing Frames Using Optical Flow
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Displaying Information to User Either a “Passed” or a “Failed” message will be displayed User not faced with detailed information Improves the user understandability aspect of the software Requirements Analysis
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Project Plan GoalDue date Learn to use OpenCV functions/tools to manipulate images and videos Requirements Gathering End of Term1 (Completed) Design and Development Creating User Interface Specification Designing structure of code Identifying 2 micro-expressions and 2 macro-expression End of Term2 (Completed) Implementation Training SVM to identify more micro-expressions Optimizing LBP by altering the smoothing function End of Term3 Testing and Evaluating Collect more training data for SVM Collect more test data for SVM End of Term4
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References 1. Robert Etherson. (2008). people admit to lying on their resumes. Available: http://www.databaserecords.com/blog/31-of-people-admit-to-lying-on- their-resumes/. Last accessed 28th March 2013. 2. Michelle Adler. (2009). little white coat lies. Available: http://www.newsweek.com/2009/01/07/little-white-coat-lies. Last accessed 28th March 2013. 3. Henry Bach. (2004). read face deciphering micro-expression. Available: http://www.divinecaroline.com/22189/83672-read-face-deciphering- microexpressions. Last accessed 28th March 2013.
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