The researcher has implemented the activities outlined in Part B of the proposal, covering the reporting period. All the milestones have successfully been met.
The summary of the contributions:
- technical:
• the researcher designed and implemented a novel framework named personalized machine learning, which is currently the state of the art approach for multimodal modelling of behavioural expressions of children with autism recorded during therapy sessions with a robot and a therapist (WP2-3);
• the researcher pre-processed the multi-modal (audio-visual-physiological) data of the child-robot interactions, being part of the multi-cultural dataset used for automated engagement estimation of the children with autism (WP1);
• the researcher participated in collection of new child-robot interactions in schools for a period of 3 months (8 weeks). These data were not originally planned in the proposal, but make additional contribution to the description of work in the proposal.
- dissemination:
• the researcher organized three workshops at top tier computing and robotics conferences:
The 3rd Workshop on Affective Computing (AC) at Int'l Joint Conference on Artificial Intelligence (IJCAI), 2019
Workshop on Personalized Machine Learning for Future Health, Members Event, MIT Media Lab 2018
The 1st Int'l Workshop on Deep Affective Learning and Context Modeling (DAL-COM), CVPR 2017
The Special Session on Affective Robots, ROMAN 2017
The 1st Int'l Workshop on Affective Computing for Social Robotics (ACSR), in conj. with ROMAN 2016
• the researcher gave 5 invited talks at the top tier computing/robotics conferences and universities
• the researcher created the project website
• the researcher published the research carried out in 15 research articles (conference and journal)
• the researcher performed a demo of the newly designed robot perception technology at science fairs in Serbia, Japan and USA.
- teaching:
• the researcher created a graduate course for teaching Personalized Machine Learning, which, together with Prof. Picard, he taught as the main lecturer at MIT Media Lab during the Spring semester in 2017 (January-May).
- supervision:
• the researcher supervised 4 Master thesis projects at MIT Media Lab and mentored over 10 undergraduate students who participated in the work done as part of EngageMe.
• during the return stage, the researcher has supervised 5 master students’ theses at Augsburg University/Imperial College; two of those have achieved the “distinguished thesis” award (top 5% of all master theses at the department).