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Continuous Head Movement Estimator for Driver Assistance: Issues, Algorithms, and On-Road Evaluations

机译:用于驾驶员辅助的连续头部运动估计器:问题,算法和道路评估

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摘要

Analysis of a driver's head behavior is an integral part of a driver monitoring system. In particular, the head pose and dynamics are strong indicators of a driver's focus of attention. Many existing state-of-the-art head dynamic analyzers are, however, limited to single-camera perspectives, which are susceptible to occlusion of facial features from spatially large head movements away from the frontal pose. Nonfrontal glances away from the road ahead, however, are of special interest since interesting events, which are critical to driver safety, occur during those times. In this paper, we present a distributed camera framework for head movement analysis, with emphasis on the ability to robustly and continuously operate even during large head movements. The proposed system tracks facial features and analyzes their geometric configuration to estimate the head pose using a 3-D model. We present two such solutions that additionally exploit the constraints that are present in a driving context and video data to improve tracking accuracy and computation time. Furthermore, we conduct a thorough comparative study with different camera configurations. For experimental evaluations, we collected a novel head pose data set from naturalistic on-road driving in urban streets and freeways, with particular emphasis on events inducing spatially large head movements (e.g., merge and lane change). Our analyses show promising results.
机译:分析驾驶员的头部行为是驾驶员监控系统的组成部分。特别地,头部姿势和动力是驾驶员注意力集中的有力指标。但是,许多现有的最先进的头部动态分析仪仅限于单相机透视图,这些透视图很容易因远离正面姿势的空间较大头部运动而遮挡面部特征。然而,由于在这段时间发生了对驾驶员安全至关重要的有趣事件,因此,远离前方道路的非正面视线尤其令人关注。在本文中,我们提出了用于头部运动分析的分布式摄像机框架,重点是即使在较大的头部运动过程中也能够稳定且连续地操作的能力。拟议的系统跟踪面部特征并分析其几何形状,以使用3-D模型估计头部姿势。我们提出了两个这样的解决方案,这些解决方案还利用了驾驶环境和视频数据中存在的约束来提高跟踪精度和计算时间。此外,我们使用不同的相机配置进行了全面的比较研究。为了进行实验评估,我们从城市街道和高速公路的自然主义道路驾驶中收集了一个新颖的头部姿势数据集,特别着重于引起空间上较大的头部运动(例如合并和换道)的事件。我们的分析显示出令人鼓舞的结果。

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