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Physically Consistent and Efficient Variational Denoising of Image Fluid Flow Estimates

机译:图像流体流量估计的物理上一致且有效的变分去噪

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Imaging plays an important role in experimental fluid dynamics. It is equally important both for scientific research and a range of industrial applications. It is known, however, that estimated velocity fields of fluids often suffer from various types of corruptions like missing data, for instance, that make their physical interpretation questionable. We present an algorithm that accepts a wide variety of corrupted 2-D vector fields as input data and allows to recover missing data fragments and to remove noise in a physically plausible way. Our approach essentially exploits the physical properties of incompressible fluid flows and does not rely upon any particular model of noise. As a result, the developed algorithm performs well and robust for different types of noise and estimation errors. The computational algorithm is sufficiently simple to scale up to large 3-D problems.
机译:成像在实验流体动力学中起着重要作用。对于科学研究和一系列工业应用而言,它同等重要。然而,已知的是,估计的流体速度场经常遭受各种类型的破坏,例如丢失数据,这使得它们的物理解释令人怀疑。我们提出了一种算法,该算法接受各种损坏的2-D矢量场作为输入数据,并允许以物理上合理的方式恢复丢失的数据片段并消除噪声。我们的方法主要利用不可压缩流体的物理特性,并且不依赖于任何特定的噪声模型。结果,所开发的算法对于不同类型的噪声和估计误差表现良好且鲁棒。计算算法足够简单,可以扩展到较大的3D问题。

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