2021
DOI: 10.48550/arxiv.2103.13372
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Affective Processes: stochastic modelling of temporal context for emotion and facial expression recognition

Abstract: Temporal context is key to the recognition of expressions of emotion. Existing methods, that rely on recurrent or selfattention models to enforce temporal consistency, work on the feature level, ignoring the task-specific temporal dependencies, and fail to model context uncertainty. To alleviate these issues, we build upon the framework of Neural Processes to propose a method for apparent emotion recognition with three key novel components: (a) probabilistic contextual representation with a global latent varia… Show more

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“…Although not always easy to capture, some of the affective states brought out by experts during our workshops can be automatically detected using machine learning. Deep learning approaches applied to driver-facing footage, for instance, have shown promising results in automatically identifying some of the affective states, such as, distracted or attentive driving [43], [44], different types of human emotions [45], [46], and tired or energetic [47], [48]. Alternatively, calm or aggressive driving is accurately detected using telematics incident data [2], [3], while more complex affective states such as confidence and insecurity are still difficult to detect.…”
Section: B Effects Of Contextual Factors On Hgv Drivers' Performancementioning
confidence: 99%
“…Although not always easy to capture, some of the affective states brought out by experts during our workshops can be automatically detected using machine learning. Deep learning approaches applied to driver-facing footage, for instance, have shown promising results in automatically identifying some of the affective states, such as, distracted or attentive driving [43], [44], different types of human emotions [45], [46], and tired or energetic [47], [48]. Alternatively, calm or aggressive driving is accurately detected using telematics incident data [2], [3], while more complex affective states such as confidence and insecurity are still difficult to detect.…”
Section: B Effects Of Contextual Factors On Hgv Drivers' Performancementioning
confidence: 99%