首页> 外文期刊>Experiments in Fluids: Experimental Methods and Their Applications to Fluid Flow >Detection of microorganismic flows by linear and nonlinear optical methods and automatic correction of erroneous images artefacts and moving boundaries in image generating methods by a neuronumerical hybrid implementing the Taylor's hypothesis as a p
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Detection of microorganismic flows by linear and nonlinear optical methods and automatic correction of erroneous images artefacts and moving boundaries in image generating methods by a neuronumerical hybrid implementing the Taylor's hypothesis as a p

机译:通过线性和非线性光学方法检测微生物流,并通过将泰勒假设假设为p的神经数字混合体自动校正图像生成方法中的错误图像伪影和移动边界

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摘要

In biological fluid mechanics powerful imaging methods for flow analysis are required for making progress towards a better understanding of natural phenomena being optimised in the course of evolution. At the same time it is of crucial importance that the measuring and flow visualisation techniques employed guarantee biocompatibility, i.e. they do not distort the behaviour of biosystems. Unfortunately, this restricts seriously the measures for optimising the image generation in comparison to other flow fields in which no biological systems are present. As a consequence, images of lower quality leading to erroneous artefacts are obtained. Thus, either novel detection techniques that are able to overcome these disadvantages or advanced evaluation methods enabling the sophisticated analysis and description of flow fields are essential. In the present contribution, both areas are covered. A novel so-called neuronumerical hybrid allows to detect artefacts in conventional experimental particle image velocimetry (PIV) data of microorganismic flow fields generated by ciliates. The handling of artefacts is performed by the hybrid using a priori knowledge of the flow physics formulated in numerical expressions and the enormous potential of artificial neural networks in predicting artefacts and correcting them. In fact, the neuronumerical hybrid based on the physical knowledge provided by the Taylor's hypothesis can detect not only spurious velocity vectors but also additional phenomena like a moving boundary, in the present case caused by the contraction of the zooid of a microorganism. Apart from the detection of the artefacts, a correction of the spurious velocity vectors is possible. Furthermore, a method to detect microscopic velocity fields based on nonlinear optical filtering, optical novelty filter (ONF) is presented. On the one hand, it can be employed to expose phase changes in flow fields directly from the nonlinear response and without additional tracers. On the other hand, it can be used to preprocess low quality images of flow fields loaded with particles and extract the motion of particles with an enhanced contrast. The flow fields obtained by the correlation based PIV method of the ONF filtered and unfiltered image sequences are compared and discussed.
机译:在生物流体力学中,需要强大的成像方法来进行流动分析,以更好地理解在进化过程中被优化的自然现象。同时,至关重要的是,采用的测量和流量可视化技术必须保证生物相容性,即它们不会扭曲生物系统的行为。不幸的是,与没有生物系统的其他流场相比,这严重限制了用于优化图像生成的措施。结果,获得了导致错误伪像的较低质量的图像。因此,无论是能够克服这些缺点的新颖检测技术,还是能够对流场进行复杂分析和描述的先进评估方法,都是必不可少的。在本文稿中,这两个领域都涵盖了。一种新颖的所谓的神经数字混合体可以检测纤毛虫产生的微生物流场的常规实验粒子图像测速(PIV)数据中的伪影。人工制品的处理由混合动力公司完成,使用数值表达式中阐述的流动物理学先验知识以及人工神经网络在预测和校正人工制品方面的巨大潜力。实际上,基于泰勒假说提供的物理知识的神经数字混合体不仅可以检测伪速度矢量,还可以检测其他现象(如移动边界),在当前情况下是由微生物的动物类的收缩引起的。除了检测伪像外,还可以校正伪速度矢量。此外,提出了一种基于非线性光学滤波,光学新颖滤波器(ONF)的微观速度场检测方法。一方面,它可以用来直接从非线性响应中暴露流场中的相变,而无需其他示踪剂。另一方面,它可用于预处理装载有颗粒的流场的低质量图像,并提取对比度增强的颗粒运动。比较并讨论了通过基于相关性的PIV方法对ONF滤波和未滤波图像序列获得的流场。

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