A Novel User Emotional Interaction Design Model Using Long and Short-Term Memory Networks and Deep Learning

Author:

Chen Xiang,Huang Rubing,Li Xin,Xiao Lei,Zhou Ming,Zhang Linghao

Abstract

Emotional design is an important development trend of interaction design. Emotional design in products plays a key role in enhancing user experience and inducing user emotional resonance. In recent years, based on the user's emotional experience, the design concept of strengthening product emotional design has become a new direction for most designers to improve their design thinking. In the emotional interaction design, the machine needs to capture the user's key information in real time, recognize the user's emotional state, and use a variety of clues to finally determine the appropriate user model. Based on this background, this research uses a deep learning mechanism for more accurate and effective emotion recognition, thereby optimizing the design of the interactive system and improving the user experience. First of all, this research discusses how to use user characteristics such as speech, facial expression, video, heartbeat, etc., to make machines more accurately recognize human emotions. Through the analysis of various characteristics, the speech is selected as the experimental material. Second, a speech-based emotion recognition method is proposed. The mel-Frequency cepstral coefficient (MFCC) of the speech signal is used as the input of the improved long and short-term memory network (ILSTM). To ensure the integrity of the information and the accuracy of the output at the next moment, ILSTM makes peephole connections in the forget gate and input gate of LSTM, and adds the unit state as input data to the threshold layer. The emotional features obtained by ILSTM are input into the attention layer, and the self-attention mechanism is used to calculate the weight of each frame of speech signal. The speech features with higher weights are used to distinguish different emotions and complete the emotion recognition of the speech signal. Experiments on the EMO-DB and CASIA datasets verify the effectiveness of the model for emotion recognition. Finally, the feasibility of emotional interaction system design is discussed.

Publisher

Frontiers Media SA

Subject

General Psychology

Cited by 8 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Interactive evolutionary design method of product modeled based on interactive three-dimensional spherical interface;Operations Management Research;2024-03-09

2. Comparative Analysis of Vocal and Textual Emotion Detection and their association with Consumer Preferences: An Empirical Study;2023 11th International Conference on Affective Computing and Intelligent Interaction Workshops and Demos (ACIIW);2023-09-10

3. Eye Tracking, Usability, and User Experience: A Systematic Review;International Journal of Human–Computer Interaction;2023-06-18

4. Interpretable Emotion Classification Using Multidomain Feature of EEG Signals;IEEE Sensors Journal;2023-06-01

5. A Comparison Between Convolutional and Transformer Architectures for Speech Emotion Recognition;2022 International Joint Conference on Neural Networks (IJCNN);2022-07-18

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