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Robust and accurate 2D-tracking-based 3D positioning method: Application to head pose estimation

机译:基于鲁棒精确的基于2D跟踪的3D定位方法:用于头部姿势估计的应用

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摘要

Head pose estimation (HPE) is currently a growing research field, mainly because of the proliferation of human-computer interfaces (HCI) in the last decade. It offers a wide variety of applications, including human behavior analysis, driver assistance systems or gaze estimation systems. This article aims to contribute to the development of robust and accurate HPE methods based on 2D tracking of the face, enhancing performance of both 2D point tracking and 3D pose estimation. We start with a baseline method for pose estimation based on POSIT algorithm. A novel weighted variant of POSIT is then proposed, together with a methodology to estimate weights for the 2D-3D point correspondences. Further, outlier detection and correction methods are also proposed in order to enhance both point tracking and pose estimation. With the aim of achieving a wider impact, the problem is addressed using a global approach: all the methods proposed are generalizable to any kind of object for which an approximate 3D model is available. These methods have been evaluated for the specific task of HPE using two different head pose video databases; a recently published one that reflects the expected performance of the system in current technological conditions, and an older one that allows an extensive comparison with stateof-the-art HPE methods. Results show that the proposed enhancements improve the accuracy of both 2D facial point tracking and 3D HPE, with respect to the implemented baseline method, by over 15% in normal tracking conditions and over 30% in noisy tracking conditions. Moreover, the proposed HPE system outperforms the state of the art on the two databases.
机译:头部姿势估计(HPE)目前是一种日益增长的研究领域,主要是由于在过去十年中的人机界面(HCI)的扩散。它提供各种应用,包括人类行为分析,驾驶员辅助系统或凝视估计系统。本文旨在为基于2D跟踪的脸部进行鲁棒和准确的HPE方法的开发,提高2D点跟踪和3D姿态估计的性能。我们从基于算法的姿态估计开始基线方法。然后提出一种小型的权重变体,以及一种方法来估计2D-3D点对应的权重。此外,还提出了异常检测和校正方法,以增强点跟踪和姿态估计。旨在实现更广泛的影响,使用全局方法解决了问题:所提出的所有方法都是概括的,对任何类型的对象都是可用的。使用两种不同的头部姿势视频数据库评估了HPE的特定任务的这些方法;最近发布的一个反映了当前技术条件中系统的预期绩效,以及允许与艺术型HPE方法进行广泛比较的较旧的。结果表明,该提升的增强功能提高了2D面部点跟踪和3D HPE的准确性,相对于实施的基线方法,在正常跟踪条件下超过15%,嘈杂的跟踪条件超过30%。此外,所提出的HPE系统优于两个数据库上的技术状态。

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