CVJul 23, 2019

Deep Temporal Analysis for Non-Acted Body Affect Recognition

arXiv:1907.09945v133 citations
Originality Incremental advance
AI Analysis

This addresses the problem of recognizing genuine emotions from body movements for applications like video surveillance and human-robot interaction, representing an incremental advance in a niche area.

The paper tackles non-acted emotion recognition from body movements by analyzing 3D skeleton data with deep neural networks, incorporating temporal local movements and novel features, and achieves state-of-the-art results by outperforming all competitors on the UCLIC dataset.

Affective computing is a field of great interest in many computer vision applications, including video surveillance, behaviour analysis, and human-robot interaction. Most of the existing literature has addressed this field by analysing different sets of face features. However, in the last decade, several studies have shown how body movements can play a key role even in emotion recognition. The majority of these experiments on the body are performed by trained actors whose aim is to simulate emotional reactions. These unnatural expressions differ from the more challenging genuine emotions, thus invalidating the obtained results. In this paper, a solution for basic non-acted emotion recognition based on 3D skeleton and Deep Neural Networks (DNNs) is provided. The proposed work introduces three majors contributions. First, unlike the current state-of-the-art in non-acted body affect recognition, where only static or global body features are considered, in this work also temporal local movements performed by subjects in each frame are examined. Second, an original set of global and time-dependent features for body movement description is provided. Third, to the best of out knowledge, this is the first attempt to use deep learning methods for non-acted body affect recognition. Due to the novelty of the topic, only the UCLIC dataset is currently considered the benchmark for comparative tests. On the latter, the proposed method outperforms all the competitors.

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