Dataset

Code for training and using the soot (instance) segmentation models

This dataset contains the necessary code for using our soot (instance) segmentation model used for segmenting soot filaments from PIV (Mie scattering) images. In the corresponding paper, an ablation study is conducted to delineate the effects of domain randomisation parameters of synthetically generated training data on the segmentation accuracy. The best model is used to extract high-level statistics from soot filaments in an RQL-type model combustor to enhance the fundamental understanding soot formation, transport and oxidation. B. Jose, K. P. Geigle, F. Hampp, Domain-Randomised Instance-Segmentation Benchmark for Soot in PIV Images, submitted to Machine Learning: Science and Technology (2025)

Chemical Info

Data and Resources

Metadata Information

Field Value
DOI https://doi.org/10.18419/DARUS-5184
License URL
Source https://doi.org/10.18419/DARUS-5184
Version
Author Jose, Basil, Geigle, Klaus Peter, Hampp, Fabian
Maintainer DaRUS
Language English
MetadataPublished
Related Molecule
Field Value
No additional information available for this Dataset.
Data-Source Molecule ID Data-Source
The data in this table is sourced from UniChem at EBI.