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Facial Expression Recognition and Positive Emotion Incentive System for Human-Robot Interaction

机译:人机交互的面部表情识别和积极情绪激励系统

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Facial Expression Recognition (FER) is a hot research topic currently, many efforts have been made on improving the recognition accuracy on certain datasets. Nevertheless, most of the existing works on FER are focused on verifying their algorithms on testing set, ignoring the practicability of their model in the real world. In this paper, more attention is addressed on improving the FER performance in the wild and the application of the FER model on robots. Firstly, a FER dataset is collected for training the model of facial expression recognition in the wild (FERW). Furthermore, a real-time positive emotion incentive system (PEIS) is developed for improving user experience of the robot. The proposed PEIS, which can recognize, record, analysis the emotion status of the users and give humanized feedback, consists of emotion recognition, emotion analysis and emotion feedback. Emotion recognition, the first as well as the most important part of this system, is realized by FERW based on deep learning and voting method. The PEIS is evaluated in two scenario, one is the accuracy of FERW in natural scene, and the other is the user experience of the robot employs the PEIS. Finally, experiments show that our FERW model can recognize facial expressions in real-life with an accuracy of 79%, which is practicable in the real world. Our robot XiaoBao, equipped with the PEIS, is able to enhance user experience.
机译:面部表情识别(FER)是当前的一个热门研究主题,在提高某些数据集的识别准确性方面已经做出了许多努力。尽管如此,有关FER的大多数现有工作都集中于在测试集上验证其算法,而忽略了其模型在现实世界中的实用性。在本文中,更多的注意力集中在改善野外的FER性能以及FER模型在机器人上的应用上。首先,收集FER数据集以训练野外面部表情识别(FERW)模型。此外,开发了实时积极情绪激励系统(PEIS)以改善机器人的用户体验。拟议的PEIS可以识别,记录,分析用户的情感状态并给出人性化的反馈,包括情感识别,情感分析和情感反馈。情感识别是该系统的第一个也是最重要的部分,是通过FERW基于深度学习和投票方法实现的。在两种情况下评估PEIS,一种是自然场景中FERW的准确性,另一种是使用PEIS的机器人的用户体验。最后,实验表明,我们的FERW模型可以以79%的准确度识别现实生活中的面部表情,这在现实世界中是可行的。我们配备了PEIS的机器人XiaoBaoBao能够增强用户体验。

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