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Particle image models for optical flow-based velocity field estimation in image velocimetry

机译:图像测速中基于光流的速度场估计的粒子图像模型

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This paper examines two models for image representation used for optical flow estimation in Particle Image Velocimetry (PIV). The common approach for flow estimation bases on a cross-correlation between PIV images. An alternative solution bases on an optical flow, which has the advantage of calculating vector fields with much better spatial resolution. The optical flow-based estimation requires calculations of temporal and spatial derivatives of the image intensity, which is usually achieved by using finite differences. Due to rapid intensity changes in the PIV images caused by particles having small diameters, an exact estimation of spatial derivatives using finite differences may lead to numerical errors that render data interpretation limited or even impractical. The present study aims at solving this problem by introducing two algorithms for PIV image processing, which differs in terms of a digital image representation. Both algorithms rely on a PIV image model, wherein the particle image complies with an Airy disc, which is well approximated by using a Gaussian function. Numerical analysis of sample PIV images (uniform and turbulent fields) show that both methods allow for high precision flow-velocity fields estimates in conjunction with the Lucas-Kanade algorithm.
机译:本文研究了两个用于粒子图像测速(PIV)中光流估计的图像表示模型。流量估算的通用方法基于PIV图像之间的互相关。一种替代解决方案基于光流,它的优点是可以计算出具有更好的空间分辨率的矢量场。基于光流的估计需要计算图像强度的时间和空间导数,这通常是通过使用有限差分来实现的。由于直径较小的粒子在PIV图像中引起的强度快速变化,使用有限差分对空间导数进行精确估计可能会导致数值错误,从而导致数据解释受到限制甚至不切实际。本研究旨在通过引入两种用于PIV图像处理的算法来解决此问题,这两种算法在数字图像表示方面有所不同。两种算法都依赖于PIV图像模型,其中粒子图像符合Airy圆盘,该圆盘通过使用高斯函数很好地近似。对样本PIV图像(均匀场和湍流场)的数值分析表明,两种方法都可以结合Lucas-Kanade算法实现高精度的流速场估计。

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