Improving Human-Machine Interaction – A Multimodal Non-Invasive Approach to Detect Emotions in Car Drivers

Activity: Talk or presentationConference PresentationsResearch

Michael Oehl - Speaker

Tessa-Karina Tews - Coauthor

Felix Siebert - Coauthor

Hans-Rüdiger Pfister - Coauthor

Michael Oehl - Coauthor

Rainer Höger - Coauthor

09.07.201114.07.2011

Event

14th International Conference on Human-Computer Interaction – HCII 2011

09.07.1114.07.11

Orlando, United States

Event: Conference

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