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A Fuzzy Deep Neural Network With Sparse Autoencoder for Emotional Intention Understanding in Human–Robot Interaction

机译:一种模糊深度神经网络,具有稀疏自动化器,用于人机互动中的情感意向理解

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摘要

A fuzzy deep neural network with sparse autoencoder (FDNNSA) is proposed for intention understanding based on human emotions and identification information (i.e., age, gender, and region), in which the fuzzy C-means (FCM) is used to cluster the input data, and deep neural network with sparse autoencoder (DNNSA) is designed for emotional intention understanding in human-robot interaction. It aims to make robots capable of recognizing human emotions and understanding related emotional intention, the FCM is suitable for gathering similar information so that the calculations of dimensionality of DNNSA will be reduced, and the sparse autoencoder of DNNSA can make the neuron of DNNSA sparse to reduce the complexity of the network in such a way human-robot interaction is running smoothly. To validate the proposal, simulation experiments based on benchmark databases such as facial expression database of CK+, and speech emotion corpus of CASIA were completed. The experimental results show that the proposal outperforms the baseline algorithms of Softmax regression (SR), DNNSA, FCM-based SR (FSR), Softplus, Gath Geva-based DNNSA (GDNNSA), and ensemble DNNSA (EDNNSA). Preliminary application experiments are performed in the development of emotional social robot system, where volunteers experience the scenario of "drinking at the bar". The obtained results indicate that the proposed FDNNSA can promote robot understanding of emotional intention of human.
机译:基于人类情绪和识别信息(即年龄,性别和区域)的意图理解,提出了一种具有稀疏自动化器(FDNNSA)的模糊深神经网络,其中模糊C-Manial(FCM)用于聚类输入数据和具有稀疏性AutoEncoder(DNNSA)的深神经网络旨在为人机互动中的情感意向理解而设计。它旨在使能够识别人类情绪和了解相关的情感意图的机器人,FCM适用于收集类似的信息,以降低DNNSA的维度的计算,DNNSA的稀疏性疏易液体可以使DNNSA的神经元稀疏。以人机机器人交互顺利运行的方式降低网络的复杂性。为了验证提案,完成了基于基准数据库的模拟实验,例如CK +的面部表情数据库,以及卡西亚的语音情感语料库。实验结果表明,该提议优于软乳头回归(SR),DNNSA,基于FCM的SR(FSR),SoftPlus,Gath基于GEVA的DNNSA(GDNNSA)的基线算法,以及集合DNNSA(EDNNSA)。初步应用实验是在情绪社会机器人系统的发展中进行的,志愿者体验了“在酒吧饮酒”的情景。所获得的结果表明,拟议的FDNNSA可以促进机器人的理解人类的情绪意图。

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