| Literature DB >> 34484569 |
Desmond C Ong1, Zhengxuan Wu2, Tan Zhi-Xuan3, Marianne Reddan4, Isabella Kahhale4, Alison Mattek5, Jamil Zaki4.
Abstract
Human emotions unfold over time, and more affective computing research has to prioritize capturing this crucial component of real-world affect. Modeling dynamic emotional stimuli requires solving the twin challenges of time-series modeling and of collecting high-quality time-series datasets. We begin by assessing the state-of-the-art in time-series emotion recognition, and we review contemporary time-series approaches in affective computing, including discriminative and generative models. We then introduce the first version of the Stanford Emotional Narratives Dataset (SENDv1): a set of rich, multimodal videos of self-paced, unscripted emotional narratives, annotated for emotional valence over time. The complex narratives and naturalistic expressions in this dataset provide a challenging test for contemporary time-series emotion recognition models. We demonstrate several baseline and state-of-the-art modeling approaches on the SEND, including a Long Short-Term Memory model and a multimodal Variational Recurrent Neural Network, which perform comparably to the human-benchmark. We end by discussing the implications for future research in time-series affective computing.Entities:
Keywords: Affect sensing and analysis; Affective Computing; Emotional corpora; Multi-modal recognition
Year: 2019 PMID: 34484569 PMCID: PMC8414991 DOI: 10.1109/taffc.2019.2955949
Source DB: PubMed Journal: IEEE Trans Affect Comput ISSN: 1949-3045 Impact factor: 13.990