Research Student Project Supervisor name & contact details: Dr. Brian Vaughan School of Media brian.vaughan@dit.ie Research Centre Name and Website (if applicable) Digital Media Centre Please indicate if the intention is to transfer from the Masters programme to the PhD programme (if applicable) NA Please indicate if the project is suitable for a self-funded student Yes Funding Agency Scholarship Details Subject Area Social signal processing Title of the Project Social signal recognition training platform for people with Autism Spectrum Disorder (ASD) People with ASD have difficulty recognising and responding to facial and auditory social signals. This project will develop a platform that will train people with ASD to recognise and respond to basic and complex social signals. The project will use a range of speech and vision technologies (prosodic accommodation, dimensional emotional representation, openCV, facial action coding system) to develop a tiered framework, moving from basic to more complex, implemented as a serious game. The project will utilise facial avatars and speech synthesis to deliver a range of basic and complex facial and speech expressions to demonstrate different emotional and social states (angry, happy, sad; sarcastic, humorous etc) in order to enable people with ASD to attain an increased ability in social interaction. It is envisaged that users will select from a number of possible answers related to the visual and auditory information on screen, with the goal of achieving a certain score so they can progress to the next level of training. The training will consist of a number of tiered levels: visual facial expressions only, auditory vocal expressions only, and a combination of the two in later, more advanced levels. The project will also consider the inclusion of a system that will provide real-time feedback related to the facial and vocal performance of the user as they try to match the multi-modal expressions presented by the system. Please indicate the student requirements for this project Min 2.1 in a masters degree, preferably an MSc. Alternatively, 2.1 or higher in a computer science/engineering based background. Applicants with a medical qualification or a psychology qualification will also be considered. Deadline to submit applications (only for funded projects)