论文标题
使用机器学习方法的图像识别泡沫识别
Bubble identification from images with machine learning methods
论文作者
论文摘要
高度需要对气泡流图像进行自动化和可靠的处理,以分析大型的综合实验系列数据集。由于记录的图像中重叠的气泡投影而引起了特定的困难,这极大地使单个气泡的识别复杂化。最近的方法着重于将深度学习算法用于此任务,并且已经证明了此类技术的高潜力。主要困难是能够处理不同的图像条件,较高的气体体积分数以及部分遮挡气泡的隐藏段的适当重建。在目前的工作中,我们试图通过基于卷积神经网络(CNN)测试两种以前和两种单独方法来解决这些要点,这些方法随后可用于解决后者。为了验证我们的方法论,我们创建了使用合成图像的测试数据集,这些图像进一步证明了我们组合方法的功能和局限性。可以访问生成的数据,代码和训练的模型,以促进实验图像中气泡识别的研究领域的进一步发展。
An automated and reliable processing of bubbly flow images is highly needed to analyse large data sets of comprehensive experimental series. A particular difficulty arises due to overlapping bubble projections in recorded images, which highly complicates the identification of individual bubbles. Recent approaches focus on the use of deep learning algorithms for this task and have already proven the high potential of such techniques. The main difficulties are the capability to handle different image conditions, higher gas volume fractions and a proper reconstruction of the hidden segment of a partly occluded bubble. In the present work, we try to tackle these points by testing three different methods based on Convolutional Neural Networks (CNNs) for the two former and two individual approaches that can be used subsequently to address the latter. To validate our methodology, we created test data sets with synthetic images that further demonstrate the capabilities as well as limitations of our combined approach. The generated data, code and trained models are made accessible to facilitate the use as well as further developments in the research field of bubble recognition in experimental images.