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3D Head Pose Estimation Enhanced Through SURF-Based Key-Frames

机译:通过基于SURF的关键帧增强了3D头部姿势估计

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摘要

This work presents a method that incorporates 2D and 3D cues for the estimation of head pose. We propose the use of the concept of Key-Frames (KF), a set of frames where the position and orientation of the head is automatically calculated off-line, to improve the precision of pose estimation and detection rate. Each KF consists of: 2D information, encoded by SURF descriptors; 3D information from a depth image (both acquired by an RGB-D sensor); and a generic 3D model that corresponds to the head localization and orientation in the real world. Our algorithm compares a new frame against all KFs and selects the most relevant one. The 3D transformation between both, selected KF and current frame, can be estimated using the depth image and the Iterative Closest Point algorithm in an online framework. Compared to reference approaches, our system can handle partial occlusions and extreme rotations even with noisy depth data. We evaluate the proposal using two challenging datasets: (1) an dataset acquired by us where the ground-truth information is given by a commercial Motion Capture system and (2) the public benchmark Biwi Kinect Head Pose Database.
机译:这项工作提出了一种方法,该方法结合了2D和3D线索来估计头部姿势。我们建议使用“关键帧”(KF)的概念,即一组可以自动离线计算头部位置和方向的帧,以提高姿势估计和检测率的精度。每个KF包括:2D信息,由SURF描述符编码;来自深度图像的3D信息(均由RGB-D传感器获取);以及与现实世界中的头部定位和方向相对应的通用3D模型。我们的算法将新框架与所有KF进行比较,并选择最相关的框架。可以在在线框架中使用深度图像和迭代最近点算法来估计所选KF和当前帧之间的3D转换。与参考方法相比,即使有嘈杂的深度数据,我们的系统也可以处理部分遮挡和极端旋转。我们使用两个具有挑战性的数据集来评估该提案:(1)由我们获取的数据集,其中由商业Motion Capture系统提供地面信息,以及(2)公开基准Biwi Kinect头部姿势数据库。

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