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Highly Accurate and Fully Automatic 3D Head Pose Estimation and Eye Gaze Estimation Using RGB-D Sensors and 3D Morphable Models

机译:使用RGB-D传感器和3D可变形模型的高精度和全自动3D头部姿势估计和视线估计

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摘要

This work addresses the problem of automatic head pose estimation and its application in 3D gaze estimation using low quality RGB-D sensors without any subject cooperation or manual intervention. The previous works on 3D head pose estimation using RGB-D sensors require either an offline step for supervised learning or 3D head model construction, which may require manual intervention or subject cooperation for complete head model reconstruction. In this paper, we propose a 3D pose estimator based on low quality depth data, which is not limited by any of the aforementioned steps. Instead, the proposed technique relies on modeling the subject’s face in 3D rather than the complete head, which, in turn, relaxes all of the constraints in the previous works. The proposed method is robust, highly accurate and fully automatic. Moreover, it does not need any offline step. Unlike some of the previous works, the method only uses depth data for pose estimation. The experimental results on the Biwi head pose database confirm the efficiency of our algorithm in handling large pose variations and partial occlusion. We also evaluated the performance of our algorithm on IDIAP database for 3D head pose and eye gaze estimation.
机译:这项工作解决了自动头部姿势估计的问题及其在使用低质量RGB-D传感器的3D凝视估计中的应用,而无需任何主题合作或手动干预。以前使用RGB-D传感器进行3D头部姿势估计的工作需要离线步骤进行监督学习或3D头部模型构建,这可能需要人工干预或主题合作才能完成完整的头部模型重建。在本文中,我们提出了一种基于低质量深度数据的3D姿态估计器,该方法不受上述任何步骤的限制。取而代之的是,提出的技术依赖于以3D而非完整的头部对对象的脸部建模,从而减轻了先前作品中的所有限制。所提出的方法是鲁棒的,高度准确的并且是全自动的。而且,它不需要任何离线步骤。与某些先前的工作不同,该方法仅将深度数据用于姿势估计。 Biwi头部姿势数据库上的实验结果证实了我们的算法在处理较大姿势变化和部分遮挡方面的效率。我们还在IDIAP数据库上评估了3D头部姿势和视线估计算法的性能。

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