SFF-DA: Sptialtemporal Feature Fusion for Detecting Anxiety Nonintrusively
Early detection of anxiety is crucial for reducing the suffering of individuals with mental disorders and improving treatment outcomes. Utilizing an mHealth platform for anxiety screening can be particularly practical in improving screening efficiency and reducing costs. However, the effectiveness o...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
11.08.2022
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Subjects | |
Online Access | Get full text |
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Summary: | Early detection of anxiety is crucial for reducing the suffering of
individuals with mental disorders and improving treatment outcomes. Utilizing
an mHealth platform for anxiety screening can be particularly practical in
improving screening efficiency and reducing costs. However, the effectiveness
of existing methods has been hindered by differences in mobile devices used to
capture subjects' physical and mental evaluations, as well as by the
variability in data quality and small sample size problems encountered in
real-world settings. To address these issues, we propose a framework with
spatiotemporal feature fusion for detecting anxiety nonintrusively. We use a
feature extraction network based on a 3D convolutional network and long
short-term memory ("3DCNN+LSTM") to fuse the spatiotemporal features of facial
behavior and noncontact physiology, which reduces the impact of uneven data
quality. Additionally, we design a similarity assessment strategy to address
the issue of deteriorating model accuracy due to small sample sizes. Our
framework is validated with a crew dataset from the real world and two public
datasets: the University of Burgundy Franche-Comté Psychophysiological
(UBFC-Phys) dataset and the Smart Reasoning for Well-being at Home and at Work
for Knowledge Work (SWELL-KW) dataset. The experimental results indicate that
our framework outperforms the comparison methods. |
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DOI: | 10.48550/arxiv.2208.06411 |