Emotion Recognition With Sequential Multi-task Learning Technique

Phan Tran Dac Thinh, Hoang Manh Hung, Hyung-Jeong Yang, Soohyung Kim, Gueesang Lee
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引用次数: 4

Abstract

The task of predicting affective information in the wild such as seven basic emotions or action units from human faces has gradually become more interesting due to the accessibility and availability of massive annotated datasets. In this study, we propose a method that utilizes the association between seven basic emotions and twelve action units from the AffWild2 dataset. The method based on the architecture of ResNet50 involves the multi-task learning technique for the incomplete labels of the two tasks. By combining the knowledge for two correlated tasks, both performances are improved by a large margin compared to those with the model employing only one kind of label.
基于顺序多任务学习技术的情绪识别
由于大量带注释的数据集的可访问性和可用性,预测人类面部的七种基本情绪或行动单位等情感信息的任务逐渐变得更加有趣。在本研究中,我们提出了一种利用AffWild2数据集中的7种基本情绪和12种动作单元之间的关联的方法。基于ResNet50架构的方法涉及到对两个任务的不完整标签的多任务学习技术。通过结合两个相关任务的知识,与仅使用一种标签的模型相比,两者的性能都有很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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