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Robust Full-Motion Recovery of Head by Dynamic Templates and Re-registration Techniques

机译:动态模板和重新注册技术可实现健壮的头部全运动恢复

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This article presents a method to recover the full-motion (3 rotations and 3 translations) of the head from an input video using a cylindrical head model. Given an initial reference template of the head image and the corresponding head pose, the head model is created and full head motion is recovered automatically. The robustness of the approach is achieved by a combination of three techniques. First, we use the iteratively reweighted least squares (IRLS) technique in conjunction with the image gradient to accommodate nonrigid motion and occlusion. Second, while tracking, the templates are dynamically updated to diminish the effects of self-occlusion and gradual lighting changes and to maintain accurate tracking even when the face moves out of view of the camera. Third, to minimize error accumulation inherent in the use of dynamic templates, we re-register images to a reference template whenever head pose is close to that in the template. The performance of the method, which runs in real time, was evaluated in three separate experiments using image sequences (both synthetic and real) for which ground truth head motion was known. The real sequences included pitch and yaw as large as 40°and 75° respectively. The average recovery accuracy of the 3D rotations was about 3°. In a further test, the method was used as part of a facial expression analysis system intended for use with spontaneous facial behavior in which moderate head motion is common. Image data consisted of 1-min of video from each of 10 subjects while engaged in a two-person interview. The method successfully stabilized face and eye images allowing for 98% accuracy in automatic blink recognition.
机译:本文介绍了一种使用圆柱头模型从输入视频中恢复头的完整运动(3次旋转和3个平移)的方法。给定头部图像的初始参考模板和相应的头部姿势,即可创建头部模型,并自动恢复完整的头部运动。该方法的鲁棒性是通过三种技术的组合来实现的。首先,我们结合图像梯度使用迭代加权最小二乘(IRLS)技术来适应非刚性运动和遮挡。其次,在跟踪时,会动态更新模板,以减少自我遮挡和渐进的光照变化的影响,即使在人脸离开相机视线时也能保持准确的跟踪。第三,为了最大程度地减少使用动态模板时固有的错误累积,只要头部姿势接近模板中的姿势,我们就会将图像重新注册到参考模板中。在三个独立的实验中,使用已知地面真相头部运动的图像序列(合成图像和实物图像)评估了实时运行方法的性能。实际序列包括分别大至40°和75°的俯仰和偏航。 3D旋转的平均恢复精度约为3°。在进一步的测试中,该方法被用作面部表情分析系统的一部分,该系统旨在与自发的面部行为配合使用,在这种行为中,头部的动作比较普遍。图像数据由来自十个受试者的每人1分钟的视频组成,同时进行了两人访谈。该方法成功地稳定了脸部和眼睛的图像,自动眨眼识别的准确性达到98%。

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