基于融合分类器的面部特征检测的面部表情识别:实时场景

K. Yadav, Joyeeta Singha, R. Laskar
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引用次数: 2

摘要

就沟通而言,有两种沟通方式,即语言和非语言。言语是语言交际的媒介,而手势和面部表情是非语言交际的媒介。在我们的日常社交生活中,面部表情在说话者和听话者之间传递信息方面起着重要的作用。面部表情不仅可以改变谈话的流程,还可以为听者提供一些上下文信息,因此听者可以很容易地感觉到召集人的实际状态。面部表情表达了人的内心情绪状态。本文提出了一种检测人脸中包含高信息量的特定区域的方法,用于情感识别。在这项工作中,该方法是检测面部的某些特定区域,而不是检测面部的所有部分。因此,该方法比现有的面部表情识别方法更快。在分类方面,采用HOG和LBP特征相结合的融合方法,取得了较好的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Expression Recognition using Facial Features Detection using the Fusion of Classifiers: In a real-time scenario
For the communication, there are two modes of communication i.e. verbal and non-verbal. The speech is the medium of verbal communication whenever the gestures and the facial expressions are the medium of non-verbal communication. In our daily social life, the facial expressions play an important role to convey some information between the speaker and the listener. The facial expressions can not only change the flow of conversation but also provide some contextual information to the listener, therefore, the listener can easily sense the actual state of the convener. Facial expression express human's inner emotional states. In this paper, an approach has been proposed to detect the specific region of the face which consist of very high information for emotion recognition. In this work, the approach is to detect some particular region of the face instead to detect all facial parts. Therefore this approach is faster than the existing approaches for facial expression recognition. For the classification, a fusion approach has been used and achieved a good recognition rate with the combination of HOG and LBP features.
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