Automatic multiviewface detection and pose estimationfrom videos based on mixture-of-trees model and optical flow

Huisi Wu, Laiqun Li, Jingjing Liu, Youcai Zhu, Ping Li, Zhenkun Wen
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Abstract

Face detection is an important task in the field of computer vision, which is widely used in the field of security, human-machine interaction, identity recognition, and etc. Many existing methods are developed for image based face pose estimation, but few of them can be directly extended to videos. However, video-based face pose estimation is much more important and frequently used in real applications. This paper describes a method of automatic face pose estimation from videos based on mixture-of-trees model and optical flow. Unlike the traditional mixture-of-trees model, which may easily incur errors in losing faces or with wrong angles for a sequence of faces in video, our method is much more robust by considering the spatio-temporal consistency on the face pose estimation for video. To preserve the spatio-temporal consistency from one frame to the next, this method employs an optical flow on the video to guide the face pose estimation based on mixture-of-trees. Our method is extensively evaluated on videos including different faces and with different pose angles. Both visual and statistics results demonstrated its effectiveness on automatic face pose estimation.
基于混合树模型和光流的视频多视图自动检测和姿态估计
人脸检测是计算机视觉领域的一项重要任务,在安全、人机交互、身份识别等领域有着广泛的应用。现有的基于图像的人脸姿态估计方法很多,但很少有方法可以直接扩展到视频中。然而,基于视频的人脸姿态估计在实际应用中更为重要和频繁。本文提出了一种基于混合树模型和光流的视频人脸姿态自动估计方法。传统的混合树模型容易导致丢失人脸或视频中人脸序列角度错误,而我们的方法考虑了视频人脸姿态估计的时空一致性,具有更强的鲁棒性。为了保持每一帧图像的时空一致性,该方法利用视频中的光流来指导基于混合树的人脸姿态估计。我们的方法在包含不同面孔和不同姿势角度的视频上进行了广泛的评估。视觉和统计结果都证明了该方法在人脸姿态自动估计中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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