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An efficiency improved recognition algorithm for highly overlapping ellipses: Application to dense bubbly flows

机译:一种高效改进的高度重叠椭圆识别算法:在稠密气泡流中的应用

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摘要

Image analysis is a widespread and performant tool for the characterization of particulate systems in chemical engineering. However, for bubbly flows, due to the wide range of particles size, shape and the appearance of large clusters resulting from particles projections overlapping at high hold-up, automatic particle detection remains a challenge. An efficient methodology for bubbly flow characterization based on pattern recognition is presented. The proposed algorithm provides an exhaustive, robust and computationally efficient way of analyzing complex images involving large ellipse clusters even in concentrated medium. The method is fully automated. A sub-clustering approach enables significant computation time reduction. Moreover, thanks to its ease of parallelization, it allows considering real time monitoring. (c) 2017 Elsevier B.V. All rights reserved.
机译:图像分析是化学工程中表征颗粒系统的一种广泛而高效的工具。然而,对于气泡流而言,由于宽范围的颗粒尺寸,形状和大的团簇外观(由于在高滞留率下重叠的颗粒投影导致),自动颗粒检测仍然是一个挑战。提出了一种基于模式识别的气泡流表征的有效方法。所提出的算法提供了一种详尽,鲁棒且计算效率高的方法,即使在浓缩介质中,也可以分析涉及大椭圆簇的复杂图像。该方法是完全自动化的。子集群方法可显着减少计算时间。此外,由于其易于并行化,因此可以考虑进行实时监视。 (c)2017 Elsevier B.V.保留所有权利。

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