English

Towards DeepSpray: Using Convolutional Neural Network to post-process Shadowgraphy Images of Liquid Atomization

Computer Vision and Pattern Recognition 2019-10-25 v1 Data Analysis, Statistics and Probability

Abstract

This technical report investigates the potential of Convolutional Neural Networks to post-process images from primary atomization. Three tasks are investigated. First, the detection and segmentation of liquid droplets in degraded optical conditions. Second, the detection of overlapping ellipses and the prediction of their geometrical characteristics. This task corresponds to extrapolate the hidden contour of an ellipse with reduced visual information. Third, several features of the liquid surface during primary breakup (ligaments, bags, rims) are manually annotated on 15 experimental images. The detector is trained on this minimal database using simple data augmentation and then applied to other images from numerical simulation and from other experiment. In these three tasks, models from the literature based on Convolutional Neural Networks showed very promising results, thus demonstrating the high potential of Deep Learning to post-process liquid atomization. The next step is to embed these models into a unified framework DeepSpray.

Keywords

Cite

@article{arxiv.1910.11073,
  title  = {Towards DeepSpray: Using Convolutional Neural Network to post-process Shadowgraphy Images of Liquid Atomization},
  author = {Geoffroy Chaussonnet and Christian Lieber and Yan Yikang and Wenda Gu and Andreas Bartschat and Markus Reischl and Rainer Koch and Ralf Mikut and Hans-Jörg Bauer},
  journal= {arXiv preprint arXiv:1910.11073},
  year   = {2019}
}

Comments

Technical report, 22 pages, 29 figures

R2 v1 2026-06-23T11:53:38.318Z