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Resolving Position Ambiguity of IMU-Based Human Pose with a Single RGB Camera

机译:用单个RGB相机解决基于IMU的人类姿势的位置模糊性

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摘要

Human motion capture (MoCap) plays a key role in healthcare and human–robot collaboration. Some researchers have combined orientation measurements from inertial measurement units (IMUs) and positional inference from cameras to reconstruct the 3D human motion. Their works utilize multiple cameras or depth sensors to localize the human in three dimensions. Such multiple cameras are not always available in our daily life, but just a single camera attached in a smart IP devices has recently been popular. Therefore, we present a 3D pose estimation approach from IMUs and a single camera. In order to resolve the depth ambiguity of the single camera configuration and localize the global position of the subject, we present a constraint which optimizes the foot-ground contact points. The timing and 3D positions of the ground contact are calculated from the acceleration of IMUs on foot and geometric transformation of foot position detected on image, respectively. Since the results of pose estimation is greatly affected by the failure of the detection, we design the image-based constraints to handle the outliers of positional estimates. We evaluated the performance of our approach on public 3D human pose dataset. The experiments demonstrated that the proposed constraints contributed to improve the accuracy of pose estimation in single and multiple camera setting.
机译:人体运动捕获(Mocap)在医疗保健和人机器人协作中起着关键作用。一些研究人员从惯性测量单元(IMU)和来自摄像机的位置推断具有组合的定向测量,以重建3D人类运动。他们的作品利用多个摄像机或深度传感器来定位三个维度的人。我们的日常生活中,这种多个摄像机并不总是可用的,但只有一个连接在智能IP设备中的单个相机最近一直很受欢迎。因此,我们从IMU和单个相机呈现3D姿态估计方法。为了解决单个摄像机配置的深度模糊性并本地化对象的全局位置,我们提供了一个优化脚踏接触点的约束。地面接触的时序和3D位置分别从IMU的加速度计算在图像上检测到的脚位置的脚和几何变换。由于姿势估计的结果受到检测失败的大大影响,因此我们设计了基于图像的约束来处理位置估计的异常值。我们评估了我们在公共3D人类姿势数据集中的方法的表现。实验表明,所提出的约束有助于提高单一和多个相机设置中的姿势估计的准确性。

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