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Robust head pose estimation based on key frames for human-machine interaction

机译:基于人机交互关键框架的强大头姿态估计

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摘要

Humans can interact with several kinds of machine (motor vehicle, robots, among others) in different ways. One way is through his/her head pose. In this work, we propose a head pose estimation framework that combines 2D and 3D cues using the concept of key frames (KFs). KFs are a set of frames learned automatically offline that consist the following: 2D features, encoded through Speeded Up Robust Feature (SURF) descriptors; 3D information, captured by Fast Point Feature Histogram (FPFH) descriptors; and target’s head orientation (pose) in real-world coordinates, which is represented through a 3D facial model. Then, the KF information is re-enforced through a global optimization process that minimizes error in a way similar to bundle adjustment. The KF allows to formulate, in an online process, a hypothesis of the head pose in new images that is then refined through an optimization process, performed by the iterative closest point (ICP) algorithm. This KF-based framework can handle partial occlusions and extreme rotations even with noisy depth data, improving the accuracy of pose estimation and detection rate. We evaluate the proposal using two public benchmarks in the state of the art: (1) BIWI Kinect Head Pose Database and (2) ICT 3D HeadPose Database. In addition, we evaluate this framework with a small but challenging dataset of our own authorship where the targets perform more complex behaviors than those in the aforementioned public datasets. We show how our approach outperforms relevant state-of-the-art proposals on all these datasets.
机译:人类可以以不同的方式与多种机器(机动车,机器人,其中)互动。一种方式是通过他/她的头姿势。在这项工作中,我们提出了一个头部姿势估计框架,其使用关键帧(KFS)的概念来结合2D和3D提示。 KFS是一组帧自动脱机,包括以下内容:2D功能,通过加速强大的强大功能(Surf)描述符编码; 3D信息,由快点特征直方图(FPFH)描述符捕获;与真实坐标中的目标的头向定向(姿势)通过3D面部模型表示。然后,通过全局优化过程重新强制执行KF信息,其最小化类似于捆绑调整的方式的错误。 KF允许在在线过程中配方,通过优化过程,由迭代最近点(ICP)算法执行的新图像中的头部姿势的假设。这种基于KF的框架可以处理部分闭塞和极端旋转,即使具有嘈杂的深度数据,提高了姿态估计和检测率的准确性。我们评估了在现有技术中使用两个公共基准的提案:(1)Biwi Kinect头部姿势数据库和(2)ICT 3D搭扣数据库。此外,我们还使用我们自己的作者的一个小但具有挑战性的数据集来评估此框架,其中目标比上述公共数据集中的比例更复杂。我们展示了我们的方法如何在所有这些数据集中表达相关的最先进的建议。

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