CVAPDec 10, 2019

Context-Dependent Models for Predicting and Characterizing Facial Expressiveness

arXiv:1912.04523v13 citations
Originality Incremental advance
AI Analysis

This work addresses the understudied problem of facial expressiveness prediction for applications in psychiatric care and artificial social intelligence, representing an incremental advancement.

The paper tackled the problem of automatically predicting facial expressiveness from visual data by extending the BP4D+ dataset with human ratings and developing context-dependent models. The result showed significant improvements over baselines, achieving comparable correlation to human performance.

In recent years, extensive research has emerged in affective computing on topics like automatic emotion recognition and determining the signals that characterize individual emotions. Much less studied, however, is expressiveness, or the extent to which someone shows any feeling or emotion. Expressiveness is related to personality and mental health and plays a crucial role in social interaction. As such, the ability to automatically detect or predict expressiveness can facilitate significant advancements in areas ranging from psychiatric care to artificial social intelligence. Motivated by these potential applications, we present an extension of the BP4D+ dataset with human ratings of expressiveness and develop methods for (1) automatically predicting expressiveness from visual data and (2) defining relationships between interpretable visual signals and expressiveness. In addition, we study the emotional context in which expressiveness occurs and hypothesize that different sets of signals are indicative of expressiveness in different contexts (e.g., in response to surprise or in response to pain). Analysis of our statistical models confirms our hypothesis. Consequently, by looking at expressiveness separately in distinct emotional contexts, our predictive models show significant improvements over baselines and achieve comparable results to human performance in terms of correlation with the ground truth.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes