Abstract Softmax regression based deep sparse autoencoder network for facial emotion recognition in human-robot interaction
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Softmax regression based deep sparse autoencoder network for facial emotion recognition in human-robot interaction

机译:基于Softmax回归的深稀疏自动置网络,用于人机互动中面部情感识别

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AbstractDeep neural network (DNN) has been used as a learning model for modeling the hierarchical architecture of human brain. However, DNN suffers from problems of learning efficiency and computational complexity. To address these problems, deep sparse autoencoder network (DSAN) is used for learning facial features, which considers the sparsity of hidden units for learning high-level structures. Meanwhile, Softmax regression (SR) is used to classify expression feature. In this paper, Softmax regression-based deep sparse autoencoder network (SRDSAN) is proposed to recognize facial emotion in human-robot interaction. It aims to handle large data in the output of deep learning by using SR, moreover, to overcome local extrema and gradient diffusion problems in the training process, the overall network weights are fine-tuned to reach the global optimum, which makes the entire depth of the neural network more robust, thereby enhancing the performance of facial emotion recognition. Results show that the average recognition accuracy of SRDSAN is higher than that of the SR and the convolutional neural network. The preliminarily application experiments are performed in the developing emotional social robot system (ESRS) with two mobile robots, where emotional social robot is able to recognize emotions such as happiness and angry.]]>
机译:<![cdata [ 抽象 深神经网络(DNN)已被用作建模人脑的分层体系结构的学习模型。然而,DNN遭受了学习效率和计算复杂性的问题。为了解决这些问题,深稀疏的AutoEncoder网络(DSAN)用于学习面部特征,这考虑了隐藏单元的稀疏性以学习高级结构。同时,Softmax回归(SR)用于对表达式进行分类。本文提出了Softmax回归的深稀疏自动化器网络(SRDSAN),以识别人机互动中的面部情感。它旨在通过使用SR处理深度学习的输出中的大数据,从而克服训练过程中的局部极值和渐变扩散问题,整体网络权重被微调以达到全局最优,这使得整个深度神经网络更加强大,从而提高面部情感识别的性能。结果表明,SRDSAN的平均识别精度高于SR和卷积神经网络的平均识别精度。初步的应用实验是在开发的情绪社会机器人系统(ESRS)中进行了两个移动机器人,情绪社会机器人能够识别幸福和生气的情绪。 ]]>

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