基于视频的自我监督表观情绪反应识别

Marija Jegorova, Stavros Petridis, M. Pantic
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引用次数: 1

摘要

本研究以自我监督的方式对视频输入的明显情绪反应识别(AERR)进行了研究。网络首先在不同的自监督借口任务上进行预训练,然后在下游目标任务上进行微调。自监督学习有助于使用预训练的架构和更大的数据集,这些数据集可能被认为不适合目标任务,但可能对学习信息表示有用,从而为更小更合适的数据的进一步微调提供有用的初始化。我们提出的贡献有两个方面:(1)分析了仅用于视频的表观情绪反应识别架构的不同最先进(SOTA)借口任务,以及(2)分析了可能进一步提高性能的回归和分类损失的各种组合。这两方面的贡献共同促成了目前最先进的基于连续注释的纯视频自发情绪反应识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SS-VAERR: Self-Supervised Apparent Emotional Reaction Recognition from Video
This work focuses on the apparent emotional reaction recognition (AERR) from the video-only input, conducted in a self-supervised fashion. The network is first pre-trained on different self-supervised pretext tasks and later fine-tuned on the downstream target task. Self-supervised learning facilitates the use of pre-trained architectures and larger datasets that might be deemed unfit for the target task and yet might be useful to learn informative representations and hence provide useful initializations for further fine-tuning on smaller more suitable data. Our presented contribution is two-fold: (1) an analysis of different state-of-the-art (SOTA) pretext tasks for the video-only apparent emotional reaction recognition architecture, and (2) an analysis of various combinations of the regression and classification losses that are likely to improve the performance further. Together these two contributions result in the current state-of-the-art performance for the video-only spontaneous apparent emotional reaction recognition with continuous annotations.
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