Home

Publications

Research

Teaching

People

Bio

 

 

 

 

 

 

 

PhD opening

Location: London, UK
Start date: Sept-Oct 2012
Application deadline: 31 January 2012
Eligibility requirements:
http://www.epsrc.ac.uk/funding/students/pages/eligibility.aspx

 

EPSRC supported PhD Studentship

Automatic Personality Analysis and Assessment

 

Applications are invited for a PhD Studentship to undertake interdisciplinary research in the areas of social signal processing and behavioural computing, with a particular focus on automatic personality analysis and assessment, starting September/October 2012.

Research suggests that personality traits such as extraversion, agreeableness, and openness to experience, are tightly coupled with human abilities and behaviour encountered in daily lives: success in interpersonal tasks, academic ability, job performance, etc. Moreover, the problem of assessing people's personality is very important for multiple research and business domains such as computer-mediated staff assessment and training, personality profiling for personal wellness technologies, and enhancing human-computer interaction. Therefore, this project will focus on (1) developing a set of audio-visual tools that can analyse human personality traits from nonverbal cues (e.g., non-verbal behaviour expressed through face, body and/or voice) and (2) providing automatic personality assessment in terms of extraversion, agreeableness, openness to experience, neuroticism, and conscientiousness.

The studentship will be based at the School of Electronic Engineering and Computer Science at Queen Mary, University of London and will be supervised by Dr Hatice Gunes of the Multimedia and Vision research group (http://www.eecs.qmul.ac.uk/~hatice/) and Prof Andrea Cavallaro (http://www.eecs.qmul.ac.uk/~andrea/ ) of the Vision Group research group. Information about the school and its research areas can be found at www.eecs.qmul.ac.uk.

Candidates should have a first class honours degree or equivalent (or a Masters Degree), in Computer Science, Mathematics, Physics, Engineering, and Statistics or a related discipline, and must be able to demonstrate strong mathematical and analytical skills, and programming skills in Matlab and C++. Background in visual information processing, machine learning or pattern recognition, and experience in using relevant libraries (e.g., OpenCV) is also desirable.

The studentship is funded by a Queen Mary EPSRC Doctoral Training Account, and will cover student fees and a tax-free stipend starting at GBP 15,590 per annum. Further details of the EPSRC scheme including terms and conditions can be found here: http://www.epsrc.ac.uk/funding/students/dta/Pages/default.aspx. Applicants must be UK nationals or residents as defined here: http://www.epsrc.ac.uk/funding/students/pages/eligibility.aspx

Informal enquiries can be made by email to Dr Hatice Gunes (hatice@eecs.qmul.ac.uk). To apply please follow the on-line process (see www.qmul.ac.uk/postgraduate/apply ) by selecting Electronic Engineering in the A-Z list of research opportunities and following the instructions on the right hand side of the web page.

Please note that instead of the 'Research Proposal' we request a 'Statement of Research Interests'. Your Statement of Research Interest should answer two questions: (i) Why are you interested in the proposed area? (ii) What is your experience in the proposed area? Your statement should be brief: no more than 500 words or one side of A4 paper. In addition we would also like you to send a sample of your written work. This might be a chapter of your final year dissertation, or a published conference or journal paper.  More details can be found at: www.eecs.qmul.ac.uk/phd/apply.php .

The closing date for the applications is 31/01/12.

Interviews are expected to take place during February 2012.

Valuing Diversity & Committed to Equality

 

 

Description: Description: Description: Description: Description: Description: \\bronze\andrea\public_html\Dr. Andrea Cavallaro_files\spacer.gif

 

Description: Description: Description: Description: Description: Description: \\bronze\andrea\public_html\Dr. Andrea Cavallaro_files\spacer.gif

 

 

 

 

 

 

 

Description: Description: Description: Description: Description: Description: \\bronze\andrea\public_html\Dr. Andrea Cavallaro_files\spacer.gif

 

 

 

 

(C) Queen Mary, University of London