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A Two-Layer Framework for Piecewise Linear Manifold-Based Head Pose Estimation

机译:基于分段线性流形的头部姿势估计的两层框架

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摘要

Fine-grain head pose estimation from imagery is an essential operation for many human-centered systems, including pose independent face recognition and human-computer interaction (HCI) systems. It is only recently that estimation systems have evolved past coarse level classification of pose and concentrated on fine-grain estimation. In particular, the state of the art of such systems consists of nonlinear manifold embedding techniques that capture the intrinsic relationship of a pose varying face dataset. The success of these solutions can be attributed to the acknowledgment that image variation corresponding to pose change is nonlinear in nature. Yet, the algorithms are limited by the complexity of embedding functions that describe the relationship. We present a pose estimation framework that seeks to describe the global nonlinear relationship in terms of localized linear functions. A two layer system (coarse/fine) is formulated on the assumptions that coarse pose estimation can be performed adequately using supervised linear methods, and fine pose estimation can be achieved using linear regressive functions if the scope of the pose manifold is limited. A pose estimation system is implemented utilizing simple linear subspace methods and oriented Gabor and phase congruency features. The framework is tested using widely accepted pose-varying face databases (FacePix(30) and Pointing’04) and shown to perform fine head pose estimation with competitive accuracy when compared with state of the art nonlinear manifold methods.
机译:对于许多以人为中心的系统(包括独立于姿势的人脸识别和人机交互(HCI)系统),从图像进行细粒度的头部姿势估计是一项必不可少的操作。直到最近,估计系统才发展到经过姿势的粗略分类,并专注于细粒度估计。特别地,这种系统的技术水平由非线性流形嵌入技术组成,该技术捕获姿势变化的面部数据集的固有关系。这些解决方案的成功可以归因于承认与姿势变化相对应的图像变化本质上是非线性的。然而,算法受到描述关系的嵌入函数的复杂性的限制。我们提出了一种姿态估计框架,该框架试图根据局部线性函数来描述全局非线性关系。假设可以使用监督线性方法充分执行粗略姿态估计,并且如果姿态歧管的范围受到限制,则可以使用线性回归函数实现精细姿态估计,这是一个两层系统(粗/精)。利用简单的线性子空间方法以及定向的Gabor和相位一致性特征来实现姿态估计系统。该框架使用广为接受的姿势变化的面部数据库(FacePix(30)和Pointing'04)进行了测试,并且与先进的非线性流形方法相比,该框架能够以具有竞争力的精度执行精细的头部姿势估计。

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