Vocal and facial biomarkers of depression based on motor incoordination and timing
Proceedings of the 4th international workshop on audio/visual emotion challenge, 2014•dl.acm.org
In individuals with major depressive disorder, neurophysiological changes often alter motor
control and thus affect the mechanisms controlling speech production and facial expression.
These changes are typically associated with psychomotor retardation, a condition marked by
slowed neuromotor output that is behaviorally manifested as altered coordination and timing
across multiple motor-based properties. Changes in motor outputs can be inferred from
vocal acoustics and facial movements as individuals speak. We derive novel multi-scale …
control and thus affect the mechanisms controlling speech production and facial expression.
These changes are typically associated with psychomotor retardation, a condition marked by
slowed neuromotor output that is behaviorally manifested as altered coordination and timing
across multiple motor-based properties. Changes in motor outputs can be inferred from
vocal acoustics and facial movements as individuals speak. We derive novel multi-scale …
In individuals with major depressive disorder, neurophysiological changes often alter motor control and thus affect the mechanisms controlling speech production and facial expression. These changes are typically associated with psychomotor retardation, a condition marked by slowed neuromotor output that is behaviorally manifested as altered coordination and timing across multiple motor-based properties. Changes in motor outputs can be inferred from vocal acoustics and facial movements as individuals speak. We derive novel multi-scale correlation structure and timing feature sets from audio-based vocal features and video-based facial action units from recordings provided by the 4th International Audio/Video Emotion Challenge (AVEC). The feature sets enable detection of changes in coordination, movement, and timing of vocal and facial gestures that are potentially symptomatic of depression. Combining complementary features in Gaussian mixture model and extreme learning machine classifiers, our multivariate regression scheme predicts Beck depression inventory ratings on the AVEC test set with a root-mean-square error of 8.12 and mean absolute error of 6.31. Future work calls for continued study into detection of neurological disorders based on altered coordination and timing across audio and video modalities.
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