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Multi-View Face Detection and Landmark Localization Based on MTCNN

机译:基于MTCNN的多视图人脸检测与地标定位

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As the basic tasks of face application technology, face detection and facial landmark detection are two important research directions in the fields of computer vision. In this paper, we employ the multi-task cascaded convolutional networks (MTCNN)to realize the multi-view face detection and landmark localization in complex environments. Firstly, a MTCNN-based frontal face detector is trained for frontal face detection and landmark localization. The detector can achieve high accuracy on FDDB benchmark for face detection and AFLW benchmark for facial landmark detection. Secondly, we construct a non-frontal face dataset including 10026 images and train a non-frontal face detection model to solve the detection problem of missing large-angle faces and improve the detection accuracy of non-frontal face. Finally, the frontal face detector and the non-frontal face detector are combined for multi-task and multi-view face detection. The experimental results have shown the effectiveness of the proposed method.
机译:作为人脸应用技术的基本任务,人脸检测和人脸标志检测是计算机视觉领域的两个重要研究方向。在本文中,我们使用多任务级联卷积网络(MTCNN)在复杂环境中实现多视图人脸检测和地标定位。首先,训练基于MTCNN的正面人脸检测器进行正面人脸检测和界标定位。该检测器可以在用于面部检测的FDDB基准和用于面部界标检测的AFLW基准上实现高精度。其次,构建包含10026张图像的非正面人脸数据集,并训练非正面人脸检测模型,以解决大角度人脸丢失的检测问题,提高非正面人脸的检测精度。最后,将正面人脸检测器和非正面人脸检测器组合在一起以进行多任务和多视图人脸检测。实验结果表明了该方法的有效性。

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