A Machine Learning Approach to Tracking and Characterizing Planar or Near Planar Fluid Flow

M. Gooroochurn, D. Kerr, K. Bouazza-Marouf
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引用次数: 1

Abstract

This paper presents a framework to segment planar or near-planar fluid flow and uses artificial neural networks to characterize fluid flow by determining the rate of flow and source of the fluid, which can be applied in various areas (e.g., characterizing fluid flow in surface irrigation from aerial pictures, in leakage detection, and in surgical robotics for characterizing blood flow over an operative site). For the latter, the outcome enables to assess bleeding severity and find the source of the bleeding. Based on its importance in assessing injuries and from a medical perspective in directing the course of surgery, fluid flow assessment is deemed to be a desirable addition to a surgical robot's capabilities. The results from tests on fluid flows generated from a test rig show that the proposed methods can contribute to an automated characterization of fluid flow, which in the presence of several fluid flow sources can be achieved by tracking the flows, determining the locations of the sources and their relative severities, with execution times suitable for real-time operation.
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一种跟踪和表征平面或近平面流体流动的机器学习方法
本文提出了一个平面或近平面流体分割的框架,并利用人工神经网络通过确定流体的流速和来源来表征流体流动,这可以应用于各个领域(例如,从航空图像中表征地表灌溉中的流体流动,泄漏检测,以及用于表征手术部位血流的外科机器人)。对于后者,结果能够评估出血严重程度并找到出血的来源。基于其在评估损伤和从医学角度指导手术过程中的重要性,流体流量评估被认为是手术机器人功能的理想补充。在一个试验台上对流体流动的测试结果表明,所提出的方法可以实现流体流动的自动化表征,在存在多个流体流动源的情况下,可以通过跟踪流动,确定源的位置及其相对严重程度来实现,执行时间适合实时操作。
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