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Fusing 2D and 3D clues for 3D tracking using visual and range data

机译:使用视觉和范围数据融合2D和3D线索进行3D跟踪

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3D tracking of rigid objects is required in many applications, such as robotics or augmented reality (AR). The availability of accurate pose estimates increases reliability in robotic applications and decreases jitter in AR scenarios. Pure vision-based 3D trackers require either manual initializations or offline training stages, whereas trackers relying on pure depth sensors are not suitable for AR applications. In this paper, an automated 3D tracking algorithm, which is based on fusion of vision and depth sensors via Extended Kalman Filter (EKF), which inherits a novel observation weighting method, is proposed. Moreover, novel feature selection and tracking schemes based on intensity and shape index map (SIM) data of 3D point cloud, increases 2D and 3D tracking performance significantly. The proposed method requires neither manual initialization of pose nor offline training, while enabling highly accurate 3D tracking. The accuracy of the proposed method is tested against a number of conventional techniques and superior performance is observed.
机译:在许多应用中,例如机器人技术或增强现实(AR),都需要对刚性物体进行3D跟踪。准确的姿态估计的可用性提高了机器人应用程序的可靠性,并减少了AR场景中的抖动。基于纯视觉的3D跟踪器需要手动初始化或脱机训练阶段,而依赖于纯深度传感器的跟踪器不适合AR应用。本文提出了一种基于视觉和深度传感器通过扩展卡尔曼滤波器(EKF)融合的自动3D跟踪算法,该算法继承了一种新颖的观测加权方法。此外,基于3D点云的强度和形状索引图(SIM)数据的新颖特征选择和跟踪方案显着提高了2D和3D跟踪性能。所提出的方法既不需要姿势的手动初始化也不需要离线训练,同时还可以进行高精度的3D跟踪。针对许多常规技术测试了所提出方法的准确性,并观察到了卓越的性能。

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