Joint Prediction of Group-Level Emotion and Cohesiveness with Multi-Task Loss

Bochao Zou, Zhifeng Lin, Haoyi Wang, Yingxue Wang, Xiang-wen Lyu, Haiyong Xie
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引用次数: 2

Abstract

This paper presents a hybrid deep learning network for the prediction of group-level emotion and cohesiveness. In this work, we first train deep models individually on face, pose, whole image, as well as fusion of them on Group Affect Dataset to predict group-level emotion, then feed the classification results into additional regression layer to regress group cohesiveness. Thus, our model combines group emotion and group cohesiveness and achieves better results. The best result we obtained on the test set is an ensemble of best models we trained on the validation set, and this model achieve a MSE of 0.4849. In order to further improve the performance, a multi-task loss model which combines classification of group emotion with regression of cohesiveness is adopted. Prior work on group cohesiveness usually fulfill the task of cohesiveness regression based on the output of emotion classification network. However, the two characteristics are believed to be correlated but one cannot necessarily predict the other. Hence, both information sources are important. Thus, the proposed multi-task loss setting combines the classification and regression tasks. The results prove that estimation of group emotion and cohesiveness is correlated and can be benefited by joint training of the two tasks.
多任务损失对群体情绪和凝聚力的联合预测
本文提出了一种混合深度学习网络,用于预测群体层面的情感和凝聚力。在这项工作中,我们首先对人脸、姿势、整幅图像分别进行深度训练,并在群体情感数据集上进行融合,预测群体层面的情感,然后将分类结果输入到额外的回归层中,回归群体凝聚力。因此,我们的模型结合了群体情感和群体凝聚力,取得了更好的效果。我们在测试集上获得的最佳结果是我们在验证集上训练的最佳模型的集合,该模型的MSE为0.4849。为了进一步提高多任务损失模型的性能,采用了群体情感分类与凝聚力回归相结合的多任务损失模型。先前关于群体凝聚力的研究通常是基于情感分类网络的输出来完成凝聚力回归的任务。然而,这两个特征被认为是相关的,但一个不一定预测另一个。因此,这两个信息来源都很重要。因此,提出的多任务损失设置结合了分类和回归任务。结果表明,群体情绪和凝聚力的估计是相关的,可以通过两项任务的联合训练而获益。
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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