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A reduced order extended Kalman filter for sequential images containing a moving object

机译:用于包含运动对象的连续图像的降阶扩展卡尔曼滤波器

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摘要

The extended Kalman filter (EKF) is applied to the reduction of noise in sequential images containing a moving object and to the estimation of the object's velocity. A computationally tractable approximation of the EKF, called the parallel extended Kalman filter (PEKF), is generated. The PEKF consists of a parallel bank of third-order EKFs, operating on the Fourier coefficients of the image, followed by a finite impulse response filter. The PEKF is shown to converge to the optimal (in the mean square sense) algorithm in the limit as the velocity estimation errors approach zero. The performance of the PEKF is demonstrated for very low signal-to-noise ratio (SNR) images. The PEKF also provides a natural setting for tracking slow changes in the object (real or apparent) and its velocity, since these variations are included in the model. The relation of the PEKF to another frequency domain algorithm for velocity estimation is discussed. The algorithm is illustrated by application to an example and its performance is demonstrated in the presence of velocity estimation errors.
机译:扩展卡尔曼滤波器(EKF)用于减少包含移动物体的连续图像中的噪声,并应用于物体速度的估计。生成了称为并行扩展卡尔曼滤波器(PEKF)的EKF的可计算处理的近似值。 PEKF由并行的三阶EKF组组成,对图像的傅立叶系数进行运算,然后是有限脉冲响应滤波器。当速度估计误差接近零时,PEKF被显示为在极限处收敛到最佳算法(均方意义上)。对于非常低的信噪比(SNR)图像,证明了PEKF的性能。 PEKF还提供了自然的设置来跟踪对象(真实或表观)及其速度的缓慢变化,因为这些变化已包含在模型中。讨论了PEKF与另一种用于速度估计的频域算法的关系。通过举例说明该算法,并在速度估计误差存在的情况下证明了其性能。

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