基于神经网络的三维运动估计视觉系统

P. Tsui, O. Basir
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引用次数: 1

摘要

提出了一种基于主动视觉的三维目标运动估计方法。将运动估计问题表述为运动视觉系统的位姿规划问题,以使估计不确定性最小化。采用卡尔曼滤波对目标运动参数进行估计。滤波器的Riccati方程是视觉系统控制参数(即位置、方向、速度和加速度)的函数。这允许将估计不确定性视为一个由视觉系统参数控制的进化过程。在求解Riccati方程的基础上建立目标函数,将传感器参数映射为不确定性能指标。采用遗传算法寻找使目标函数最小的最优参数。为了实现实时的运动估计性能,提出了一种人工神经网络来缓解求解Riccati方程的计算需求。通过实验验证了使用该控制方案的视觉系统对目标运动估计的速度和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural network based vision system for 3D motion estimations
An active vision approach is proposed for 3D object motion estimation. The motion estimation problem is formulated as the problem of planning the poses of a moving vision system so as to minimize the estimation uncertainties. A Kalman filter is employed to estimate the object motion parameters. The Riccati equation of the filter is developed as a function of the vision system control parameters, namely, position, orientation, velocity, and acceleration. This allows for the estimation uncertainties to be treated as an evolutionary process which is controlled by the vision system parameters. An objective function is formulated based on the solution of the Riccati equation to map the sensor parameters into an index of uncertainty performance. A genetic algorithm is used to search for the optimum parameters which minimize the objective function. To achieve real-time motion estimation performance an artificial neural network is proposed to relax the computational demands associated with solving the Riccati equation. Experiments to demonstrate the speed and accuracy of object motion estimation achieved by a vision system using this control scheme is discussed.
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