基于深度学习的多姿态人脸特征识别研究

Zhiling Ren, Xingen Xue
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引用次数: 0

摘要

提出了一种基于深度学习的多姿态人脸特征识别方法。该方法首先结合人脸特征确定人脸方向,然后根据人脸方向对人脸进行分割,得到人脸的近似正演候选区域,再通过分层结构深度学习算法进行验证。基于人脸特征和深度学习算法的多姿态人脸检测算法。利用肤色特征快速消除大部分背景区域,根据人脸几何特征确定的人脸方向对候选区域进行分割,并利用深度学习算法对候选区域进行分类。利用深度学习算法对候选区域进行分类,实现多姿态人脸特征的准确识别。该方法避免了多姿态人脸扩展特征或姿态检测器等增加算法复杂度的问题,从而提高了搜索速度和精度。实验结果表明,基于深度学习的多姿态人脸特征识别方法能够快速检测出多姿态人脸,并且对表情和遮挡具有良好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Multi Pose Facial Feature Recognition Based on Deep Learning
A multi pose facial feature recognition method based on deep learning is proposed. Firstly, the face direction is determined by eyes and mouth combined with face features, and then the face is segmented according to the face direction to get the approximate forward candidate region of the face, which is then verified by the layered structure depth learning algorithm. Multi pose face detection algorithm based on face feature and deep learning algorithm. Most of the background regions are eliminated quickly by using skin color features, and the candidate regions are segmented according to the face direction determined by face geometry features, and the candidate regions are classified by using depth learning algorithm. The candidate regions are classified by deep learning algorithm, and the multi pose facial features are accurately recognized. This method can avoid the problem of increasing the complexity of the algorithm, such as multi pose face extended feature or pose detector, so as to improve the search speed and accuracy. The experimental results show that the multi pose facial feature recognition method based on deep learning can detect the multi pose face quickly and has good robustness to expression and occlusion.
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