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Fast detection of arbitrary planar surfaces from unreliable 3D data

机译:从不可靠的3D数据快速检测任意平面

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Man-made real-world environments are dominated by planar surfaces many of which constitute behavior-relevant entities. Thus, the ability to perceive planar surfaces is vital for any embodied system operating in such environments, be it human or robotic. In this paper, we present an architecture for detection and estimation of planar surfaces in the scene from calibrated stereo images. They are represented in a behavior-oriented way, focusing on geometrical properties that are relevant for enabling basic interaction between a robot and the planar surfaces it perceives. Ego-motion of the robot is compensated for by transforming the representations into a global coordinate system using the kinematics of the robot. Our architecture is able to detect and estimate arbitrary planar surfaces, regardless of their visual appearance, their geometrical properties other than planarity and their being static or arbitrarily moving. The latter is achieved by processing each frame independently of the others. Stable representations are obtained by establishing spatio-temporal coherence between the single-frame representations of subsequent frames. Based on a RANSAC approach to plane fitting, our method is robust to unreliable 3D data such as obtained by local stereo correlation, for example. In our experiments using the Honda humanoid robot ASIMO, we show that our method is able to provide a robot in real-time with representations of planar surfaces in its environment that are sufficiently accurate for basic interaction.
机译:人造的现实环境主要由平面构成,其中许多构成与行为相关的实体。因此,感知平面表面的能力对于在这种环境下运行的任何体现系统(无论是人类还是机器人)都是至关重要的。在本文中,我们提出了一种用于从校准的立体图像中检测和估计场景中的平面的体系结构。它们以行为为导向的方式进行表示,重点关注与实现机器人与其所感知的平面之间的基本交互作用相关的几何特性。通过使用机器人的运动学将表示转换为全局坐标系,可以补偿机器人的自我运动。我们的体系结构能够检测和估计任意平面,而不管其外观,几何形状(除平面度之外)以及它们是静态还是任意移动的。后者是通过独立处理每个帧来实现的。通过在后续帧的单帧表示之间建立时空一致性,可以获得稳定的表示。基于用于平面拟合的RANSAC方法,我们的方法对于不可靠的3D数据(例如通过局部立体声相关获得的数据)具有鲁棒性。在使用本田人形机器人ASIMO进行的实验中,我们证明了我们的方法能够为机器人实时提供其环境中的平面表示,这些表示对于基本交互足够准确。

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