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Moment Invariants for 2D Flow Fields Using Normalization

机译:使用归一化的2D流场的时刻不变

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The analysis of 2D flow data is often guided by the search for characteristic structures with semantic meaning. One way to approach this question is to identify structures of interest by a human observer. The challenge then, is to find similar structures in the same or other datasets on different scales and orientations. In this paper, we propose to use moment invariants as pattern descriptors for flow fields. Moment invariants are one of the most popular techniques for the description of objects in the field of image recognition. They have recently also been applied to identify 2D vector patterns limited to the directional properties of flow fields. In contrast to previous work, we follow the intuitive approach of moment normalization, which results in a complete and independent set of translation, rotation, and scaling invariant flow field descriptors. They also allow to distinguish flow features with different velocity profiles. We apply the moment invariants in a pattern recognition algorithm to a real world dataset and show that the theoretic results can be extended to discrete functions in a robust way.
机译:对2D流数据的分析通常由搜索具有语义含义的特征结构的指导。接近这个问题的一种方法是通过人类观察者识别兴趣的结构。然后,挑战是在不同尺度和方向上找到相同或其他数据集中的类似结构。在本文中,我们建议使用矩不变量作为流场的模式描述符。时刻不变性是用于图像识别领域的对象的最流行的技术之一。它们最近还被应用于识别限于流场的方向性的2D向量模式。与以前的工作相比,我们遵循直观的时刻正常化方法,这导致完整和独立的翻译,旋转和缩放不变流场描述符。它们还允许区分具有不同速度配置文件的流特征。我们在模式识别算法中将不变性应用于真实世界数据集,并显示理论结果可以以强有力的方式扩展到离散功能。

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