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Estimation of Object Kinematics From Point Data

机译:从点数据估计对象运动学

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摘要

One of the fundamental problems arising in kinematics is that of determining object position, velocity and acceleration from given point position, velocity and acceleration data. This type of problem is frequently encountered in robotics, biomechanics, real-time control of space structures, automatic guided vehicles, etc. Complications arise when redundant data are used and when the data have errors. Chutakanonta and Gupta proposed two simple and elegant methods for the estimation of object position from the given point position data. The present work is an extension of these methods for estimating the object velocity and acceleration states from the given point position, velocity and acceleration data. The method proposed herein uses Singular Value Decomposition (SVD) to effectively estimate the object velocity and acceleration states. Such matrix decompositions can be performed by using readily available matrix-oriented software like MATLAB and can be successfully used to simplify the solution of the over-determined system of equations encountered in these types of problems. Several hypothetical examples and examples that simulate practical situations are presented to determine the effectiveness, robustness and applicability of the proposed method. The method is found to be very effective in estimating the object velocity and acceleration states in the presence of imprecise and redundant data as well as for nearly co-planar point data.
机译:运动学中出现的基本问题之一是从给定点位置,速度和加速度数据确定对象位置,速度和加速度的问题。在机器人技术,生物力学,空间结构的实时控制,自动引导的车辆等中经常遇到这种类型的问题。当使用冗余数据且数据有错误时,会出现复杂问题。 Chutakanonta和Gupta提出了两种简单而优雅的方法,可根据给定的点位置数据估算物体位置。本工作是这些方法的扩展,用于根据给定的点位置,速度和加速度数据估算物体的速度和加速度状态。本文提出的方法使用奇异值分解(SVD)来有效地估计物体速度和加速度状态。这样的矩阵分解可以通过使用容易获得的面向矩阵的软件(例如MATLAB)来执行,并且可以成功地用于简化在这类问题中遇到的方程组的超定解。提出了一些假设示例和模拟实际情况的示例,以确定所提出方法的有效性,鲁棒性和适用性。发现该方法在存在不精确和冗余数据以及几乎共面的点数据的情况下,在估计物体速度和加速度状态方面非常有效。

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