基于场景流和通用头部模型的三维头部姿态估计

Peng Liu, M. Reale, L. Yin
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引用次数: 18

摘要

头部姿势是一个人的注意力、手势和交流行为的重要指标,在人机交互、多媒体和视觉系统中有广泛的应用。在本文中,我们提出了一种新的头部姿态估计系统,通过使用Kinect进行头部区域检测[2],然后进行人脸检测,特征跟踪,最后使用有源摄像头进行头部姿态估计。通过动态外观模型(AAM)定义和跟踪人脸上的十个特征点。我们提出使用场景流方法从2D视频序列中估计头部姿态。这种估计是基于一个通用的三维头部模型,通过头部形状的先验知识和二维图像与三维通用模型之间的几何关系。我们已经用不同的相机在不同的距离实时测试了我们的头部姿势估计算法。实验证明了该系统的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Head Pose Estimation Based on Scene Flow and Generic Head Model
Head pose is an important indicator of a person's attention, gestures, and communicative behavior with applications in human computer interaction, multimedia and vision systems. In this paper, we present a novel head pose estimation system by performing head region detection using the Kinect [2], followed by face detection, feature tracking, and finally head pose estimation using an active camera. Ten feature points on the face are defined and tracked by an Active Appearance Model (AAM). We propose to use the scene flow approach to estimate the head pose from 2D video sequences. This estimation is based upon a generic 3D head model through the prior knowledge of the head shape and the geometric relationship between the 2D images and a 3D generic model. We have tested our head pose estimation algorithm with various cameras at various distances in real time. The experiments demonstrate the feasibility and advantages of our system.
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