Title
Model-based Prediction of Exogeneous and Endogeneous Attention Shifts During an Everyday Activity
Abstract
ABSTRACTHuman attention determines to a large degree how users interact with technical devices and how technical artifacts can support them optimally during their tasks. Attention shifts between different targets, triggered through changing requirements of an ongoing task or through salient distractions in the environment. Such shifts mark important transition points which an intelligent system needs to predict and attribute to an endogenous or exogenous cause for an appropriate reaction. In this paper, we describe a model which performs this task through a combination of bottom-up and topdown modeling components. We evaluate the model in a scenario with a dynamic task in a rich environment and show that the model is able to predict attention future switches with a robust classification performance.
Year
DOI
Venue
2020
10.1145/3395035.3425206
Multimodal Interfaces and Machine Learning for Multimodal Interaction
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Felix Putze120529.73
Merlin Burri200.34
Lisa-Marie Vortmann322.12
T. Schultz42423252.72