论文标题
通过深度卷积自动编码器和支持向量回归器的连续情绪识别
Continuous Emotion Recognition via Deep Convolutional Autoencoder and Support Vector Regressor
论文作者
论文摘要
自动面部表情识别是情绪识别和计算机视觉的重要研究领域。可以在几个领域中找到应用,例如医疗,驾驶员疲劳监视,社交机器人技术以及其他几种人类计算机相互作用系统。因此,至关重要的是,机器应该能够以很高的精度识别用户的情绪状态。近年来,深层神经网络在识别情绪方面取得了巨大成功。在本文中,我们通过使用基于转移学习和自动编码器的无监督学习方法来提出一个基于面部表达识别的连续情绪识别的新模型。所提出的方法还包括预处理和后处理技术,这些技术对改善预测唤醒和价维度的一致性相关系数的性能有益。在Recola 2016数据集上预测自然和自然情绪的实验结果表明,基于视觉信息的提出方法可以分别达到Valence和Ausal的CCC,分别达到0.516和0.264。
Automatic facial expression recognition is an important research area in the emotion recognition and computer vision. Applications can be found in several domains such as medical treatment, driver fatigue surveillance, sociable robotics, and several other human-computer interaction systems. Therefore, it is crucial that the machine should be able to recognize the emotional state of the user with high accuracy. In recent years, deep neural networks have been used with great success in recognizing emotions. In this paper, we present a new model for continuous emotion recognition based on facial expression recognition by using an unsupervised learning approach based on transfer learning and autoencoders. The proposed approach also includes preprocessing and post-processing techniques which contribute favorably to improving the performance of predicting the concordance correlation coefficient for arousal and valence dimensions. Experimental results for predicting spontaneous and natural emotions on the RECOLA 2016 dataset have shown that the proposed approach based on visual information can achieve CCCs of 0.516 and 0.264 for valence and arousal, respectively.