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Multi-Convolution Neural Networks-Based Deep Learning Model for Emotion Understanding

机译:基于多卷积神经网络的深度学习情感理解模型

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Multi-convolution neural networks-based deep learning model in combination with multimodal data for emotion understanding is proposed, in which facial expression and body gesture are used to achieve emotional states recognition for emotion understanding. It aims to understand coexistence multimodal information in human-robot interaction by using multi-convolution neural networks, where multilayer convolutions are connected in series and multiple networks are executed in parallel. Moreover, when optimizing the weights of deep neural network by traditional method, it is easy to fall into poor local optimal. To address this problem, a hybrid genetic algorithm with stochastic gradient descent is developed, which has the capacity of inherent implicit parallelism and better global optimization of genetic algorithm so that it can adaptively find the better weights of the network. And in order to speed up the convergence of the proposal, the weights optimized by stochastic gradient descent will be taken as a chromosome of genetic algorithms initial population, and it also can be used as a priori knowledge. To verify the effectiveness of the proposal, experiments on benchmark database of spontaneous emotion expressions are developed, and experimental results show that the proposal outperforms the state-of-the-art methods. Meanwhile, the preliminary application experiments are also carried out and the results indicate that the proposal can be extended to human-robot interaction.
机译:提出了一种基于多卷积神经网络的深度学习模型,结合多模态数据进行情感理解,利用面部表情和身体姿势实现情感状态识别。它旨在通过使用多卷积神经网络来理解人机交互中的共存多模式信息,其中多层卷积是串联连接的,而多个网络是并行执行的。而且,当用传统方法优化深度神经网络的权重时,很容易陷入较差的局部最优性。为了解决这个问题,开发了一种具有随机梯度下降的混合遗传算法,该算法具有固有的隐式并行性和更好的遗传算法全局优化能力,可以自适应地找到更好的网络权重。为了加快该建议的收敛速度,将随机梯度下降优化的权重作为遗传算法初始种群的染色体,也可以作为先验知识。为了验证该建议的有效性,在自发情绪表达的基准数据库上进行了实验,实验结果表明该建议优于最新方法。同时,还进行了初步的应用实验,结果表明该建议可以扩展到人机交互。

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