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Computation of shape through controlled active exploration

机译:通过受控主动勘探进行形状计算

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摘要

Accurate knowledge of depth continues to be of critical importance in robotic systems. Without accurate depth knowledge, tasks such as inspection, tracking, grasping, and collision-free motion planning prove to be difficult and often unattainable. Traditional visual depth recovery has relied upon techniques that require the solution of the correspondence problem or require known lighting conditions and Lambertian surfaces. In this paper, we present a technique for the derivation of depth from feature points on a target's surface using the controlled active vision framework. We use a single visual sensor mounted on the end-effector of a robotic manipulator to automatically select feature points and to derive depth estimates for those features using adaptive control techniques. Movements of the manipulator produce displacements that are measured using a sum-of-squared difference (SSD) optical flow. The measured displacements are fed into the controller to alter the path of the manipulator and to refine the depth estimate.
机译:准确的深度知识在机器人系统中仍然至关重要。如果没有准确的深度知识,则检查,跟踪,抓握和无碰撞运动计划等任务将证明是困难的,通常是无法实现的。传统的视觉深度恢复依赖于需要解决对应问题或需要已知照明条件和朗伯表面的技术。在本文中,我们提出了一种使用受控主动视觉框架从目标表面上的特征点推导深度的技术。我们使用安装在机器人操纵器末端执行器上的单个视觉传感器来自动选择特征点并使用自适应控制技术得出这些特征的深度估计。机械手的移动产生的位移是使用平方和差(SSD)光流测量的。测得的位移被馈送到控制器中,以改变操纵器的路径并完善深度估计。

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