Robust face analysis using convolutional neural networks

B. Fasel
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引用次数: 109

Abstract

Automatic face analysis has to cope with pose and lighting variations. Especially pose variations are difficult to tackle and many face analysis methods require the use of sophisticated normalization procedures. We propose a data-driven face analysis approach that is not only capable of extracting features relevant to a given face analysis task but is also robust with regard to face location changes and scale variations. This is achieved by deploying convolutional neural networks, which are either trained for facial expression recognition or face identity recognition. Combining the outputs of these networks allows us to obtain a subject dependent or personalized recognition of facial expressions.
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基于卷积神经网络的鲁棒人脸分析
自动面部分析必须处理姿势和光照变化。特别是位姿变化很难处理,许多人脸分析方法需要使用复杂的归一化程序。我们提出了一种数据驱动的人脸分析方法,该方法不仅能够提取与给定人脸分析任务相关的特征,而且对于人脸位置变化和尺度变化也具有鲁棒性。这是通过部署卷积神经网络来实现的,卷积神经网络被训练用于面部表情识别或面部身份识别。结合这些网络的输出,我们可以获得一个对象依赖或个性化的面部表情识别。
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