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Recognizing complex mental states with deep hierarchical features for Human-Robot Interaction

机译:识别具有深层次结构特征的复杂心理状态,以实现人机交互

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The use of emotional states for Human-Robot Interaction (HRI) has attracted considerable attention in recent years. One of the most challenging tasks is to recognize the spontaneous expression of emotions, especially in an HRI scenario. Every person has a different way to express emotions, and this is aggravated by the complexity of interaction with different subjects, multimodal information and different environments. We propose a deep neural model which is able to deal with these characteristics and which is applied in recognition of complex mental states. Our system is able to learn and extract deep spatial and temporal features and to use them to classify emotions in sequences. To evaluate the system, the CAM3D corpus is used. This corpus is composed of videos recorded from different subjects and in different indoor environments. Each video contains the recording of the upper-body part of the subject expressing one of twelve complex mental states. Our system is able to recognize spontaneous complex mental states from different subjects and can be used in such an HRI scenario.
机译:近年来,将情感状态用于人机交互(HRI)已引起了相当大的关注。最具挑战性的任务之一是识别情绪的自发表达,尤其是在HRI场景中。每个人都有不同的表达情感的方式,与不同主题,多模式信息和不同环境互动的复杂性加剧了这种情况。我们提出了一种能够处理这些特征的深层神经模型,并将其应用于复杂心理状态的识别。我们的系统能够学习和提取深层的时空特征,并使用它们对情感进行分类。为了评估系统,使用了CAM3D语料库。该语料库由不同主题和不同室内环境下录制的视频组成。每个视频都包含录制对象的上半身的录音,表示十二种复杂的心理状态之一。我们的系统能够识别来自不同主体的自发性复杂精神状态,并且可以在这种HRI场景中使用。

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