Peak-CNN: improved particle image localization using single-stage CNNs

IF 2.3 3区 工程技术 Q2 ENGINEERING, MECHANICAL Experiments in Fluids Pub Date : 2024-10-08 DOI:10.1007/s00348-024-03884-z
Philipp Godbersen, Daniel Schanz, Andreas Schröder
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Abstract

An important step in the application of Lagrangian particle tracking (LPT) or in general for image-based single particle identification techniques is the detection of particle image locations on the measurement images and their sub-pixel accurate position estimation. In case of volumetric measurements, this constitutes the first step in the process of recovering 3D particle positions, which is usually performed by triangulation procedures. For two-component 2D measurements, the particle localization results directly serve as input to the tracking algorithm. Depending on the quality of the image, the shape and size of the particle images and the amount of particle image overlap, it can be difficult to find all, or even only the majority, of the projected particle locations in a measurement image. Advanced strategies for 3D particle position reconstruction, such as iterative particle reconstruction (IPR), are designed to work with incomplete 2D particle detection abilities but even they can greatly benefit from a more complete detection as ambiguities and position errors are reduced. We introduce a convolutional neural network (CNN) based particle image detection scheme that significantly outperforms current conventional approaches, both on synthetic and experimental data, and enables particle image localization with a vastly higher completeness even at high image densities.

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峰值-CNN:利用单级 CNN 改进粒子图像定位技术
应用拉格朗日粒子跟踪(LPT)或一般基于图像的单粒子识别技术的一个重要步骤是检测测量图像上的粒子图像位置及其亚像素精确位置估算。对于体积测量,这是恢复三维粒子位置过程的第一步,通常通过三角测量程序进行。对于双分量二维测量,粒子定位结果可直接作为跟踪算法的输入。根据图像质量、粒子图像的形状和大小以及粒子图像重叠的程度,很难在测量图像中找到所有甚至大部分的投影粒子位置。先进的三维粒子位置重建策略,如迭代粒子重建(IPR),是针对不完整的二维粒子检测能力而设计的,但即使是这样,也能从更完整的检测中获益匪浅,因为模糊性和位置误差都会减少。我们介绍了一种基于卷积神经网络(CNN)的粒子图像检测方案,该方案在合成数据和实验数据上都明显优于目前的传统方法,即使在图像密度较高的情况下,也能以更高的完整性进行粒子图像定位。
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来源期刊
Experiments in Fluids
Experiments in Fluids 工程技术-工程:机械
CiteScore
5.10
自引率
12.50%
发文量
157
审稿时长
3.8 months
期刊介绍: Experiments in Fluids examines the advancement, extension, and improvement of new techniques of flow measurement. The journal also publishes contributions that employ existing experimental techniques to gain an understanding of the underlying flow physics in the areas of turbulence, aerodynamics, hydrodynamics, convective heat transfer, combustion, turbomachinery, multi-phase flows, and chemical, biological and geological flows. In addition, readers will find papers that report on investigations combining experimental and analytical/numerical approaches.
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