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MarkerPose: Robust Real-time Planar Target Tracking for Accurate Stereo Pose Estimation

机译:标记:用于准确立体声姿态估计的强大实时平面目标跟踪

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Despite the attention marker-less pose estimation has attracted in recent years, marker-based approaches still provide unbeatable accuracy under controlled environmental conditions. Thus, they are used in many fields such as robotics or biomedical applications but are primarily implemented through classical approaches, which require lots of heuristics and parameter tuning for reliable performance under different environments. In this work, we propose MarkerPose, a robust, real-time pose estimation system based on a planar target of three circles and a stereo vision system. MarkerPose is meant for high-accuracy pose estimation applications. Our method consists of two deep neural networks for marker point detection. A SuperPoint-like network for pixel-level accuracy keypoint localization and classification, and we introduce EllipSegNet, a lightweight ellipse segmentation network for sub-pixel-level accuracy keypoint detection. The marker’s pose is estimated through stereo triangulation. The target point detection is robust to low lighting and motion blur conditions. We compared MarkerPose with a detection method based on classical computer vision techniques using a robotic arm for validation. The results show our method provides better accuracy than the classical technique. Finally, we demonstrate the suitability of MarkerPose in a 3D freehand ultrasound system, which is an application where highly accurate pose estimation is required. Code is available in Python and C++ at https://github.com/jhacsonmeza/MarkerPose.
机译:尽管近年来,尽管存在关注标记的姿势估计,但基于标记的方法仍然在受控环境条件下提供无与伦比的准确性。因此,它们用于许多领域,例如机器人或生物医学应用,但主要通过经典方法实施,这需要大量启发式和参数调整在不同环境下的可靠性。在这项工作中,我们提出了基于三个圆圈的平面目标和立体视觉系统的平面目标的标记。标记为高精度姿势估计应用。我们的方法包括两个深神经网络,用于标记点检测。用于像素级精度键盘本地化和分类的超级点状网络,并且我们引入了椭圆形,这是用于子像素级精度键点检测的轻量级椭圆分段网络。通过立体声三角测量估计标记的姿势。目标点检测对于低照明和运动模糊条件是强大的。我们使用机器人臂进行验证的经典计算机视觉技术与检测方法进行比较标记。结果表明我们的方法提供了比经典技术更好的准确性。最后,我们展示了Markerpose在3D手法超声系统中的适用性,这是需要高准确的姿态估计的应用。代码在Python和C ++中获得Https://github.com/jhacsonmeza/markerpose。

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