Affective State Prediction from Smartphone Touch and Sensor Data in the Wild
Abstract
Knowledge of users’ affective states can improve their interaction with smartphones by providing more personalized experiences (e.g., search results and news articles). We present an affective state classification model based on data gathered on smartphones in real-world environments. From touch events during keystrokes and the signals from the inertial sensors, we extracted two-dimensional heat maps as input into a convolutional neural network to predict the affective states of smartphone users. For evaluation, we conducted a data collection in the wild with 82 participants over 10 weeks. Our model accurately predicts three levels (low, medium, high) of valence (AUC up to 0.83), arousal (AUC up to 0.85), and dominance (AUC up to 0.84). We also show that using the inertial sensor data alone, our model achieves a similar performance (AUC up to 0.83), making our approach less privacy-invasive. By personalizing our model to the user, we show that performance increases by an additional 0.07 AUC. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000534814Publication status
publishedExternal links
Editor
Book title
CHI '22: CHI Conference on Human Factors in Computing SystemsPages / Article No.
Publisher
Association for Computing MachineryEvent
Subject
Classification; Affective Computing; Smartphone; Deep LearningOrganisational unit
03420 - Gross, Markus / Gross, Markus
09649 - Holz, Christian / Holz, Christian
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