LGAICVHCMLJan 9, 2019

Deep Learning for Human Affect Recognition: Insights and New Developments

arXiv:1901.02884v1200 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive reference for researchers in human-computer interaction, but is incremental as it reviews existing studies without introducing new methods.

This paper reviews literature from 2010 to 2017 on human affect recognition, focusing on deep learning approaches, and finds a trend towards deep neural networks with applications in spatial, temporal, and multimodal feature representations.

Automatic human affect recognition is a key step towards more natural human-computer interaction. Recent trends include recognition in the wild using a fusion of audiovisual and physiological sensors, a challenging setting for conventional machine learning algorithms. Since 2010, novel deep learning algorithms have been applied increasingly in this field. In this paper, we review the literature on human affect recognition between 2010 and 2017, with a special focus on approaches using deep neural networks. By classifying a total of 950 studies according to their usage of shallow or deep architectures, we are able to show a trend towards deep learning. Reviewing a subset of 233 studies that employ deep neural networks, we comprehensively quantify their applications in this field. We find that deep learning is used for learning of (i) spatial feature representations, (ii) temporal feature representations, and (iii) joint feature representations for multimodal sensor data. Exemplary state-of-the-art architectures illustrate the progress. Our findings show the role deep architectures will play in human affect recognition, and can serve as a reference point for researchers working on related applications.

Foundations

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

Your Notes