Deep Learning-Based Tracking and Lineage Reconstruction of Ligament Breakup
Vrushank Ahire, Vivek Kurumanghat, Mudasir Ganaie, Lipika Kabiraj

TL;DR
This paper introduces a deep learning framework for tracking and reconstructing the breakup and lineage of ligaments and droplets in liquid sheet disintegration, enabling detailed spray analysis.
Contribution
It presents a novel two-stage deep learning approach combining object detection and lineage modeling to analyze ligament fragmentation in high-speed shadowgraphy images.
Findings
Achieved up to 0.872 F1 score in ligament and droplet detection.
Classified fragmentation events with 86.1% accuracy and 93.2% precision.
Enabled automated reconstruction of fragmentation trees and breakup statistics.
Abstract
The disintegration of liquid sheets into ligaments and droplets involves highly transient, multi-scale dynamics that are difficult to quantify from high-speed shadowgraphy images. Identifying droplets, ligaments, and blobs formed during breakup, along with tracking across frames, is essential for spray analysis. However, conventional multi-object tracking frameworks impose strict one-to-one temporal associations and cannot represent one-to-many fragmentation events. In this study, we present a two-stage deep learning framework for object detection and temporal relationship modeling across frames. The framework captures ligament deformation, fragmentation, and parent-child lineage during liquid sheet disintegration. In the first stage, a Faster R-CNN with a ResNet-50 backbone and Feature Pyramid Network detects and classifies ligaments and droplets in high-speed shadowgraphy recordings…
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