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首页> 外文期刊>Intelligent Service Robotics >Facial expression recognition and tracking for intelligent human-robot interaction
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Facial expression recognition and tracking for intelligent human-robot interaction

机译:面部表情识别和跟踪,实现智能人机交互

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摘要

For effective interaction between humans and socially adept, intelligent service robots, a key capability required by this class of sociable robots is the successful interpretation of visual data. In addition to crucial techniques like human face detection and recognition, an important next step for enabling intelligence and empathy within social robots is that of emotion recognition. In this paper, an automated and interactive computer vision system is investigated for human facial expression recognition and tracking based on the facial structure features and movement information. Twenty facial features are adopted since they are more informative and prominent for reducing the ambiguity during classification. An unsupervised learning algorithm, distributed locally linear embedding (DLLE), is introduced to recover the inherent properties of scattered data lying on a manifold embedded in high-dimensional input facial images. The selected person-dependent facial expression images in a video are classified using the DLLE. In addition, facial expression motion energy is introduced to describe the facial muscle's tension during the expressions for person-independent tracking for person-independent recognition. This method takes advantage of the optical flow which tracks the feature points' movement information. Finally, experimental results show that our approach is able to separate different expressions successfully.
机译:为了使人类与具有社交能力的智能服务机器人之间进行有效的交互,此类社交机器人所需的关键功能是成功解析视觉数据。除了诸如人脸检测和识别之类的关键技术外,在社交机器人中实现智能和同理心的重要的下一步就是情感识别。本文研究了一种基于面部结构特征和运动信息的自动交互计算机视觉系统,用于人的面部表情识别和跟踪。采用二十种面部特征,因为它们在分类过程中信息量更大且突出,可减少歧义。引入了一种无监督学习算法,即分布式局部线性嵌入(DLLE),以恢复位于高维输入面部图像中嵌入的流形上的分散数据的固有属性。使用DLLE对视频中选择的与人相关的面部表情图像进行分类。另外,引入面部表情运动能量来描述表情期间的面部肌肉张力,以进行与人无关的跟踪以进行与人无关的识别。该方法利用了跟踪特征点移动信息的光流。最后,实验结果表明我们的方法能够成功分离出不同的表达式。

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