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A novel method for head pose estimation based on the 'Vitruvian Man'

机译:基于“维特鲁威人”的头部姿态估计的新方法

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In video-surveillance and ambient intelligence applications, head-pose estimation is an important and challenging task. Basically, the problem lies in assessing the pose of the head according to three reference angles, that indicate the head rotation with respect to three orthogonal axes, and are named roll, yaw, and pitch angles. The problem becomes particularly difficult if only 2D video-sequences or still images are available, thus information about the depth of the scene is missing. This makes the computation of the pitch angle very difficult. State-of-the-art methods usually add the information on the pitch angle separately, and this makes them strongly dependent on the hardware used and the scene under surveillance. Moreover, some of them require large training sets with head poses data. Finally, the extraction of several features from the detected face is often necessary. Since head-pose estimation is only a (small) part of a video-surveillance system as a whole, it is necessary to find novel approaches which make the head-pose estimation as simple as possible, in order to allow their use in real-time. In this paper, a novel method for automatic head-pose estimation is presented. This is based on a geometrical model relying on the exploitation of the Vitruvian man's proportions and the related "Golden Ratio". Our approach reduces the number of features extracted, avoiding the need for a training set as well as information on the hardware used or the scene under control. Simple ratios among eyes and nose positions, according to the assumed "Golden Ratio", are used to compute, in particular, the pitch angle. Proposed method performs competitively with respect to state-of-the-art approaches, without requiring their working constraints and assumptions.
机译:在视频监控和环境情报应用中,头姿势估计是一项重要且具有挑战性的任务。基本上,问题在于根据三个参考角度评估头部的姿势,这三个角度表示头部相对于三个正交轴的旋转,并称为侧倾角,偏航角和俯仰角。如果仅2D视频序列或静止图像可用,则该问题将变得特别困难,因此缺少有关景深的信息。这使得俯仰角的计算非常困难。最新技术通常会在俯仰角上分别添加信息,这使它们在很大程度上取决于所使用的硬件和监视的场景。此外,其中一些需要使用头部姿势数据的大型训练集。最后,通常有必要从检测到的面部提取几个特征。由于头枕估计只是整个视频监控系统的一小部分,因此有必要找到新颖的方法,使头枕估计尽可能简单,以便在实际中使用。时间。本文提出了一种新的自动头姿势估计方法。这是基于几何模型的,该几何模型依赖于利用维特鲁威人的比例和相关的“黄金比例”。我们的方法减少了提取的特征数量,避免了需要训练集以及所用硬件或可控场景方面的信息。根据假定的“黄金比例”,眼睛和鼻子位置之间的简单比例尤其用于计算俯仰角。所提出的方法相对于最新方法具有竞争性,而无需其工作约束和假设。

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