2022
DOI: 10.1109/taffc.2020.2970712
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Spectral Representation of Behaviour Primitives for Depression Analysis

Abstract: Depression is a serious mental disorder affecting millions of people all over the world. Traditional clinical diagnosis methods are subjective, complicated and require extensive participation of clinicians. Recent advances in automatic depression analysis systems promise a future where these shortcomings are addressed by objective, repeatable, and readily available diagnostic tools to aid health professionals in their work. Yet there remain a number of barriers to the development of such tools. One barrier is … Show more

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Cited by 84 publications
(79 citation statements)
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“…Existing works have focused on either optimising the social abilities (e.g., speech recognition and dialogue management) and emotional expressiveness (e.g., empathy) of the virtual human to induce trust and natural behaviour of users [5,11,12] or evaluating its reliability as an assessment tool [15,21], whereas less attention has been given to investigating the impact of virtual human mediation on the user's behaviour expressiveness. Furthermore, although the activity performed by a user influences the predictive ability of the automatic depression and anxiety estimation systems [31]…”
Section: Related Workmentioning
confidence: 99%
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“…Existing works have focused on either optimising the social abilities (e.g., speech recognition and dialogue management) and emotional expressiveness (e.g., empathy) of the virtual human to induce trust and natural behaviour of users [5,11,12] or evaluating its reliability as an assessment tool [15,21], whereas less attention has been given to investigating the impact of virtual human mediation on the user's behaviour expressiveness. Furthermore, although the activity performed by a user influences the predictive ability of the automatic depression and anxiety estimation systems [31]…”
Section: Related Workmentioning
confidence: 99%
“…Regarding the relatively higher head yaw (left-right head turn) observed in the VH group, it is also possible that system design artefacts could have influenced head activity, e.g., looking from the on-screen text to the virtual human, but this needs to be confirmed empirically with further analysis of the eye gaze data. The performance of detection systems for depression and anxiety levels has advanced lately due to their improved ability to detect distinctive verbal & non-verbal behaviour associated with these conditions [31]. VH-mediated systems capable of evoking these characteristics could help fast-track the development of personalised digital interventions that would promote treatment accessibility to a broader population.…”
Section: Behaviour Comparison Of User Groupsmentioning
confidence: 99%
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“…The problem with these approaches is that at the level of a single frame or short segment, even people with different personality traits may display very similar non-verbal audio-visual behaviours. Therefore, these training strategies would end up utilising the same input pattern with multiple labels, making it practically impossible to train a model that has a good generalization capability [44,45,47] (Problem 2). Although some approaches select a set of key frames to represent an entire video and infer personality from such video-level representations [4,29,53] , they ignore the details contained in the discarded frames (Problem 3).…”
Section: Introductionmentioning
confidence: 99%
“…Facial Expressions Recognition is paramount to build an affective system. The system can be implemented in several application such as, but not limited to: medical area (e.g., depression analysis [2], nervous system disorder [3]), entertainment area (e.g., games [4,5]), virtual humans/agents or conversational agents [4,6,7] and many more. Several research efforts have focused on building an automatic facial expressions recognition system, and there remain some challenges yet to be solved.…”
mentioning
confidence: 99%