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Multimodal information fusion for human-robot interaction

机译:人机交互的多模式信息融合

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摘要

In this paper we introduce a multimodal information fusion for human-robot interaction system These multimodal information consists of combining methods for hand sign recognition and emotion recognition of multiple. These different recognition modalities are an essential way for Human-Robot Interaction (HRI). Sign language is the most intuitive and direct way to communication for impaired or disabled people. Through the hand or body gestures, the disabled can easily let caregiver or robot know what message they want to convey. Emotional interaction with human beings is desirable for robots. In this study, we propose an integrated system which has ability to track multiple people at the same time, to recognize their facial expressions, and to identify social atmosphere. Consequently, robots can easily recognize facial expression, emotion variations of different people, and can respond properly. In this paper, we have developed algorithms to determine the hands sign via a process called combinatorial approach recognizer equation. These two recognizers are aimed to complement the ability of discrimination. In our facial expression recognition scheme, we fuse feature vectors based approach and differential-active appearance model feature based approach to obtain not only apposite positions of feature points, but also more information about texture and appearance. We have successfully demonstrated hand gesture recognition and emotion recognition experimentally with proof of concept.
机译:在本文中,我们介绍了一种用于人机交互系统的多峰信息融合方法。这些多峰信息包含手势识别和情感多重识别的组合方法。这些不同的识别方式是人机交互(HRI)的基本方式。手语是为残障人士或残疾人提供的最直观,最直接的交流方式。通过手势或肢体手势,残疾人可以轻松地让护理人员或机器人知道他们想传达什么信息。机器人需要与人进行情感互动。在这项研究中,我们提出了一个集成系统,该系统能够同时跟踪多个人,识别他们的面部表情并识别社交氛围。因此,机器人可以轻松识别面部表情,不同人的情绪变化,并可以做出适当的反应。在本文中,我们开发了通过组合方法识别器方程来确定手势的算法。这两个识别器旨在补充歧视的能力。在我们的面部表情识别方案中,我们融合了基于特征向量的方法和基于微分活跃外观模型特征的方法,不仅获得了特征点的适当位置,而且还获得了有关纹理和外观的更多信息。我们已经通过概念验证成功地通过实验证明了手势识别和情感识别。

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