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Automatic Facial Expression Recognition Using Statistical-Like Moments

机译:使用类似统计矩的自动面部表情识别

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Research in automatic facial expression recognition has permitted the development of systems discriminating between the six prototypical expressions, i.e. anger, disgust, fear, happiness, sadness and surprise, in frontal video sequences. Achieving high recognition rate often implies high computational costs that are not compatible with real time applications on limited-resource platforms. In order to have high recognition rate as well as computational efficiency, we propose an automatic facial expression recognition system using a set of novel features inspired by statistical moments. Such descriptors, named as statistical-like moments extract high order statistic from texture descriptors such as local binary patterns. The approach has been successfully tested on the second edition of Cohn-Kanade database, showing a computational advantage and achieving a performance recognition rate comparable than methods based on different descriptors.
机译:对自动面部表情识别的研究已经允许开发区分正面视频序列中的六个原型表情(即愤怒,厌恶,恐惧,幸福,悲伤和惊奇)的系统。实现高识别率通常意味着高计算成本,与有限资源平台上的实时应用程序不兼容。为了具有较高的识别率和计算效率,我们提出了一种自动面部表情识别系统,该系统使用了一组受统计时刻启发的新颖功能。这样的描述符(称为类似统计矩的矩)从纹理描述符(例如本地二进制模式)中提取高阶统计量。该方法已经在Cohn-Kanade数据库的第二版上成功进行了测试,与基于不同描述符的方法相比,该方法显示出计算优势,并具有可比的性能识别率。

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