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Pose estimation in industrial machine vision systems under sensing dynamics: A statistical learning approach

机译:感测动力学下工业机器视觉系统中的姿态估计:一种统计学习方法

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This paper deals with the problem of pose estimation (i.e., estimating position and orientation of an moving target) for real-time visual servoing, where the vision hardware is assumed to have severely limited measurement capability. In other words, we aim to compensate the slow sensor dynamics in industrial machine vision systems. The common approach is to predict the present target motion by propagating the delayed estimates with the target dynamics. Such method is sometimes problematic since the target motion characteristics (i.e., target dynamics) may change from one visual servoing task to another. Therefore, this paper presents a method which is able to estimate the target pose as well as learn the target dynamics. We apply the Expectation-Maximization algorithm to simultaneously solve the pose estimation problem and the target dynamics modeling problem. Several techniques including the extended Kalman filter/smoother, the block coordinate descent method, and the convex optimization method are utilized to address this problem. The effectiveness of the proposed algorithm is demonstrated experimentally on a 6-DOF industrial robot.
机译:本文讨论了用于实时视觉伺服的姿势估计(即估计运动目标的位置和方向)的问题,其中视觉硬件被认为具有严重受限的测量能力。换句话说,我们旨在补偿工业机器视觉系统中缓慢的传感器动态。常用的方法是通过将延迟的估计值与目标动力学一起传播来预测当前的目标运动。由于目标运动特性(即目标动态)可能从一种视觉伺服任务改变为另一种视觉伺服任务,因此这种方法有时是有问题的。因此,本文提出了一种能够估计目标姿态并学习目标动力学的方法。我们应用Expectation-Maximization算法来同时解决姿态估计问题和目标动力学建模问题。解决扩展问题的方法包括扩展卡尔曼滤波器/平滑器,块坐标下降法和凸优化法。在六自由度工业机器人上通过实验证明了该算法的有效性。

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