Title: | Learning Mental States from Biosignals |
Author(s): | Kandemir, Melih |
Date: | 2013 |
Language: | en |
Pages: | 96 + app. 88 |
Department: | Tietojenkäsittelytieteen laitos Department of Information and Computer Science |
ISBN: | 978-952-60-5117-8 (electronic) 978-952-60-5116-1 (printed) |
Series: | Aalto University publication series DOCTORAL DISSERTATIONS, 61/2013 |
ISSN: | 1799-4942 (electronic) 1799-4934 (printed) 1799-4934 (ISSN-L) |
Supervising professor(s): | Kaski, Samuel, Prof., Aalto University, Finland |
Thesis advisor(s): | Klami, Arto, Dr., Aalto University, Finland |
Subject: | Computer science |
Keywords: | multitask learning, multiple kernel learning, probabilistic modeling, affective computing, intelligent user interfaces |
OEVS yes | |
|
|
Abstract:As computing technology evolves, users perform more complex tasks with computers. Hence, users expect from user interfaces to be more proactive than reactive. A proactive interface should anticipate the user’s intentions and take the right action without requiring a user command. The crucial first step for such an interface is to infer the user’s mental state, which gives important cues about user intentions. This thesis consists of several case studies on inferring mental states of computer users. Biosensing technology provides a variety of hardware tools for measuring several aspects of human physiology, which is correlated with emotions and mental processes. However, signals gathered with biosensors are notoriously noisy. The mainstream approach to overcome this noise is either to increase the signal precision by expensive and stationary sensors or to control the experiment setups more heavily. Both of these solutions undermine the usability of the developed methods in real-life user interfaces.
|
|
Parts:[Publication 1]: Melih Kandemir, Veli-Matti Saarinen, Samuel Kaski. Inferring Object Relevance from Gaze in Dynamic Scenes. In Eye Tracking Research and Applications, Austin TX, USA, pages 105–108, 2010.[Publication 2]: Antti Ajanki, Mark Billinghurst, Hannes Gamper, Toni Jarvenpaa, Melih Kandemir, Samuel Kaski, Markus Koskela, Mikko Kurimo, Jorma Laaksonen, Kai Puolamaki, Teemu Ruokolainen, Timo Tossavainen. An augmented reality interface to contextual information. Virtual Reality, 15(2):161–173, 2011.[Publication 3]: Mehmet Gonen, Melih Kandemir, Samuel Kaski. Multitask Learning Using Regularized Multiple Kernel Learning. In International Conference on Neural Information Processing, Shanghai, China, pages 500–509, 2011.[Publication 4]: Melih Kandemir, Samuel Kaski. Learning Relevance from Natural Eye Movements in Pervasive Interfaces. In International Conference on Multimodal Interaction, Santa Monica, CA, USA, pages 85–92, 2012.[Publication 5]: Melih Kandemir, Arto Klami, Akos Vetek, Samuel Kaski. Unsupervised inference of auditory attention from biosensors. In European Conference on Machine Learning and Practice of Knowledge Discovery in Databases, Bristol, UK, 2012, Lecture Notes in Computer Science, 7524:403–418, 2012.[Publication 6]: Melih Kandemir, Akos Vetek, Mehmet Gonen, Arto Klami, Samuel Kaski. Multi-task and multi-view learning of user state. Submitted to a journal, 24 pages, 2012. |
|
|
Unless otherwise stated, all rights belong to the author. You may download, display and print this publication for Your own personal use. Commercial use is prohibited.
Page content by: Aalto University Learning Centre | Privacy policy of the service | About this site