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Tracking facial features using probabilistic network

机译:使用概率网络跟踪面部特征

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摘要

In this paper, an improved model-based automatic face/head tracking algorithm is presented. The input to the system is a video sequence including a head-and-shoulders scene. The outputs are the detected global head movements and the local facial feature motions. To estimate the global head position, the 2D image coordinates of feature points are mapped to 3D by assuming the projection is approximately scaled orthographic. After this initial estimation, Kalman filter is employed to improve the temporal stability. For non-rigid local facial motion tracking, a probabilistic network is constructed to encode the information about the relative positions and velocities among various facial feature points. This network is trained in a supervised fashion and is applied later as structural constraints to incorporate with the traditional template matching method. Currently, the conditional distributions employed in the network are two-dimensional. They are obtained bp learning front front-view sequences. To apply this network to 3D face/head tracking, pose compensation must be performed based on the estimated head poses.
机译:本文介绍了一种改进的基于模型的自动面/头跟踪算法。系统的输入是包括头部和肩部场景的视频序列。输出是检测到的全球头部运动和本地面部特征运动。为了估计全局头部位置,通过假设投影大致缩放正射刻度,特征点的2D图像坐标被映射到3D。在此初始估计之后,采用卡尔曼滤波器来提高时间稳定性。对于非刚性本地面部运动跟踪,构造概率网络以编码各种面部特征点之间的相对位置和速度的信息。该网络以监督方式培训,以后应用于结构约束,以包含传统模板匹配方法。目前,网络中使用的条件分布是二维的。获得了BP学习前正面序列。为了将该网络应用于3D面/头跟踪,必须基于估计的头部姿势执行姿势补偿。

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