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A hybrid deep learning neural approach for emotion recognition from facial expressions for socially assistive robots

机译:对社会辅助机器人面部表情情感认知的混合深度学习神经方法

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Abstract We have recently seen significant advancements in the development of robotic machines that are designed to assist people with their daily lives. Socially assistive robots are now able to perform a number of tasks autonomously and without human supervision. However, if these robots are to be accepted by human users, there is a need to focus on the form of human–robot interaction that is seen as acceptable by such users. In this paper, we extend our previous work, originally presented in Ruiz-Garcia et al. (in: Engineering applications of neural networks: 17th international conference, EANN 2016, Aberdeen, UK, September 2–5, 2016, proceedings, pp 79–93, 2016. https://doi.org/10.1007/978-3-319-44188-7_6 ), to provide emotion recognition from human facial expressions for application on a real-time robot. We expand on previous work by presenting a new hybrid deep learning emotion recognition model and preliminary results using this model on real-time emotion recognition performed by our humanoid robot. The hybrid emotion recognition model combines a Deep Convolutional Neural Network (CNN) for self-learnt feature extraction and a Support Vector Machine (SVM) for emotion classification. Compared to more complex approaches that use more layers in the convolutional model, this hybrid deep learning model produces state-of-the-art classification rate of $$96.26%$$ 96.26 % , when tested on the Karolinska Directed Emotional Faces dataset (Lundqvist et al. in The Karolinska Directed Emotional Faces—KDEF, 1998), and offers similar performance on unseen data when tested on the Extended Cohn–Kanade dataset (Lucey et al. in: Proceedings of the third international workshop on CVPR for human communicative behaviour analysis (CVPR4HB 2010), San Francisco, USA, pp 94–101, 2010). This architecture also takes advantage of batch normalisation (Ioffe and Szegedy in Batch normalization: accelerating deep network training by reducing internal covariate shift. http://arxiv.org/abs/1502.03167 , 2015) for fast learning from a smaller number of training samples. A comparison between Gabor filters and CNN for feature extraction, and between SVM and multilayer perceptron for classification is also provided.
机译:摘要我们最近看到了旨在帮助人们日常生活的机器人机器机器机器机器的重要进步。社交辅助机器人现在能够自主地和没有人类监督的若干任务。然而,如果人类用户将接受这些机器人,则需要专注于这些用户可接受的人机交互的形式。在本文中,我们延长了我们以前的工作,最初呈现在Ruiz-Garcia等。 (如:Neural Networks的工程应用:17国际会议,2016年,英国,英国,2016年9月2日至2016年9月2日,PP 79-93,2016。https://doi.org/10.1007/978-3- 319-44188-7_6),为在实时机器人上提供人类面部表情的情感识别。我们通过在我们的人形机器人执行的实时情感识别上展示新的混合深度学习情感识别模型和初步结果,扩展了以前的工作。混合情感识别模型结合了深度卷积神经网络(CNN)用于自学习特征提取和用于情感分类的支持向量机(SVM)。与在卷积模型中使用更多层的更复杂的方法相比,这种混合的深度学习模型产生了最先进的分类率$$ 96.26 %$$ 96.26%,当在Karolinska定向情感面部数据集(Lundqvist等人。在Karolinska指示的情感面孔-KDEF,1998),并在延伸的COHN-KANADE DataSet上测试时提供类似的性能(Lucey等人。分析(CVPR4HB 2010),旧金山,美国,PP 94-101,2010)。该架构还利用批量归一化(IOFFE和Szegedy,通过批量归一化:通过减少内部协变速转移加速深网络培训。http://arxiv.org/abs/1502.03167,2015)从较少数量的训练样本中快速学习。还提供了Gabor滤波器和CNN用于特征提取的CNN的比较,并且SVM与Multidayer Perceptron进行分类。

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