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对称赞语回应之“thank you”的研究(英文)
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作者 金喆 《神州》 2013年第35期162-163,共2页
致谢作为一种和谐性的言语行为,本质上是礼貌的,与道歉,命令,祝贺和许诺一样,它与人们的日常生活密切相关。致谢同时又是我们日常生活中发生频率很高的一种言语行为。正确地表达致谢有着重要的社会价值。本研究从理论上增进了我们... 致谢作为一种和谐性的言语行为,本质上是礼貌的,与道歉,命令,祝贺和许诺一样,它与人们的日常生活密切相关。致谢同时又是我们日常生活中发生频率很高的一种言语行为。正确地表达致谢有着重要的社会价值。本研究从理论上增进了我们有关致谢言语行为的知识,从实践上可以帮助我们建立一个良好的人际关系和和谐的社会氛围。 展开更多
关键词 致谢 言语行为理论 致谢的性质 生成机制 “thank you” the fea-tures of“thank you”
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Pose-robust feature learning for facial expression recognition 被引量:3
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作者 Feifei ZHANG Yongbin YU +2 位作者 Qirong MAO Jianping GOU Yongzhao ZHAN 《Frontiers of Computer Science》 SCIE EI CSCD 2016年第5期832-844,共13页
Automatic facial expression recognition (FER) from non-frontal views is a challenging research topic which has recently started to attract the attention of the research community. Pose variations are difficult to ta... Automatic facial expression recognition (FER) from non-frontal views is a challenging research topic which has recently started to attract the attention of the research community. Pose variations are difficult to tackle and many face analysis methods require the use of sophisticated nor- malization and initialization procedures. Thus head-pose in- variant facial expression recognition continues to be an is- sue to traditional methods. In this paper, we propose a novel approach for pose-invariant FER based on pose-robust fea- tures which are learned by deep learning methods -- prin- cipal component analysis network (PCANet) and convolu- tional neural networks (CNN) (PRP-CNN). In the first stage, unlabeled frontal face images are used to learn features by PCANet. The features, in the second stage, are used as the tar- get of CNN to learn a feature mapping between frontal faces and non-frontal faces. We then describe the non-frontal face images using the novel descriptions generated by the maps, and get unified descriptors for arbitrary face images. Finally, the pose-robust features are used to train a single classifier for FER instead of training multiple models for each spe- cific pose. Our method, on the whole, does not require pose/ landmark annotation and can recognize facial expression in a wide range of orientations. Extensive experiments on two public databases show that our framework yields dramatic improvements in facial expression analysis. 展开更多
关键词 facial expression recognition pose-robust fea-tures principal component analysis network (PCANet) con-volutional neural networks (CNN)
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