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Real-Time Facial Feature Extraction Scheme Using Cascaded Networks

机译:级联网络的实时人脸特征提取方案

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Facial landmarks such as eyes, nose, and mouth are the most prominent feature points on the face. So far, many works have been done for efficiently extracting such landmarks from facial images. Utilizing more feature points for landmark extraction usually requires more processing time, which has been an obstacle to real-time processing or video processing. On the contrary, utilizing a too small number of feature points cannot represent diverse landmark properties such as shape accurately. In this paper, we propose a deep learning based method for extracting popular 68 feature points for facial landmarks quickly and accurately. To do that, we first detect all the faces in the image by using a cascaded structure composed of relatively light Convolution Neural Networks(CNN). Then, we perform facial landmark extraction for each face, which reduces the processing time a lot. We performed several experiments to evaluate the performance of our method. We report some of the results.
机译:眼睛,鼻子和嘴巴等面部标志是脸上最突出的特征点。迄今为止,已经进行了许多工作以有效地从面部图像中提取这样的界标。利用更多的特征点进行地标提取通常需要更多的处理时间,这已经成为实时处理或视频处理的障碍。相反,利用太少的特征点不能准确地表示不同的界标属性,例如形状。在本文中,我们提出了一种基于深度学习的方法,用于快速,准确地提取面部地标的流行68个特征点。为此,我们首先使用由相对较轻的卷积神经网络(CNN)组成的级联结构检测图像中的所有面孔。然后,我们对每张脸进行人脸界标提取,从而大大减少了处理时间。我们进行了几次实验,以评估我们方法的性能。我们报告了一些结果。

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