Multimodal dimensional affect recognition using deep bidirectional long short-term memory recurrent neural networks

Ercheng Pei, Le Yang, D. Jiang, H. Sahli
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引用次数: 26

Abstract

In this paper we propose the deep bidirectional long short-term memory recurrent neural network (DBLSTM-RNN) based single modal and multi-modal affect recognition frameworks. In the single modal framework DBLSTM with moving average (MA), audio or visual features are input into the DBLSTM-RNN model, whose output estimations of a dimension are smoothed by the moving average filter. After the smoothed estimations are expanded to the frame rate of the ground truth labels, another MA is adopted for smoothing the final results. In the multi-modal framework DBLSTM-DBLSTM-MA, the initial estimations from the audio and visual modalities via the first layer of DBLSTM-RNNs are input into a second layer of DBLSTM-RNN, whose outputs are smoothed by MA. The smoothed estimations are then expanded to the frame rate of the ground truth labels and smoothed again by another MA. Affect recognition experiments are carried out on the training set and development set of the AVEC2014 database, results show that the proposed DBLSTM-MA framework outperforms linear regression, support vector regression (SVR), and BLSTM for single modal dimension estimation. For audio visual multi-modal affect recognition, DBLSTM-DBLSTM-MA obtains better or comparable performance than the state of the art results in the competition of AVEC2014, with the average correlation coefficient (COR) reaches 0.599 on the Freeform database, 0.630 on the Northwind database, and 0.615 on the Freeform-Northwind database.
基于深度双向长短期记忆递归神经网络的多模态多维情感识别
提出了基于深度双向长短期记忆递归神经网络(DBLSTM-RNN)的单模态和多模态情感识别框架。在具有移动平均(MA)的单模态DBLSTM框架中,将音频或视觉特征输入到DBLSTM- rnn模型中,通过移动平均滤波器对输出的维数估计进行平滑处理。将平滑估计扩展到地面真值标签的帧率后,采用另一个MA对最终结果进行平滑处理。在多模态框架DBLSTM-DBLSTM-MA中,通过第一层DBLSTM-RNN的音频和视觉模态的初始估计被输入到第二层DBLSTM-RNN中,其输出被MA平滑。然后将平滑估计扩展到地面真值标签的帧速率,并通过另一个MA再次平滑。在AVEC2014数据库的训练集和开发集上进行了影响识别实验,结果表明,DBLSTM-MA框架在单模态维数估计方面优于线性回归、支持向量回归和BLSTM。在视听多模态情感识别方面,DBLSTM-DBLSTM-MA在AVEC2014竞赛中取得了优于或可与现有成果相媲美的性能,其平均相关系数(COR)在Freeform数据库上达到0.599,在Northwind数据库上达到0.630,在Freeform-Northwind数据库上达到0.615。
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