Logo
User: Guest  Login
Authors:
Buschek, Daniel; Alt, Florian 
Document type:
Konferenzbeitrag / Conference Paper 
Title:
TouchML: A Machine Learning Toolkit for Modelling Spatial Touch Targeting Behaviour 
Title of conference publication:
IUI '15 
Subtitle of conference publication:
Proceedings of the 20th International Conference on Intelligent User Interfaces 
Conference title:
International Conference on Intelligent User Interfaces (20., 2015, Atlanta, GA) 
Venue:
Atlanta, Georgia, USA 
Year of conference:
2015 
Date of conference beginning:
29.03.2015 
Date of conference ending:
01.04.2015 
Place of publication:
New York, NY, USA 
Publisher:
ACM 
Year:
2015 
Pages from - to:
110-114 
Language:
Englisch 
Keywords:
gaussian process ; machine learning ; toolkit, touch 
Abstract:
Pointing tasks are commonly studied in HCI research, for example to evaluate and compare different interaction techniques or devices. A recent line of work has modelled user-specific touch behaviour with machine learning methods to reveal spatial targeting error patterns across the screen. These models can also be applied to improve accuracy of touchscreens and keyboards, and to recognise users and hand postures. However, no implementation of these techniques has been made publicly available yet...    »
 
ISBN:
978-1-4503-3306-1 
Article ID:
2701381