Automatic segmentation for synchrotron-based imaging of porous bread dough using deep learning approach.

automatic analysis bread deep learning micro-CT micro-structure porosity

Journal

Journal of synchrotron radiation
ISSN: 1600-5775
Titre abrégé: J Synchrotron Radiat
Pays: United States
ID NLM: 9888878

Informations de publication

Date de publication:
01 Mar 2021
Historique:
received: 07 04 2020
accepted: 04 02 2021
entrez: 2 3 2021
pubmed: 3 3 2021
medline: 3 3 2021
Statut: ppublish

Résumé

In recent years, major capability improvements at synchrotron beamlines have given researchers the ability to capture more complex structures at a higher resolution within a very short time. This opens up the possibility of studying dynamic processes and observing resulting structural changes over time. However, such studies can create a huge quantity of 3D image data, which presents a major challenge for segmentation and analysis. Here tomography experiments at the Australian synchrotron source are examined, which were used to study bread dough formulations during rising and baking, resulting in over 460 individual 3D datasets. The current pipeline for segmentation and analysis involves semi-automated methods using commercial software that require a large amount of user input. This paper focuses on exploring machine learning methods to automate this process. The main challenge to be faced is in generating adequate training datasets to train the machine learning model. Creating training data by manually segmenting real images is very labour-intensive, so instead methods of automatically creating synthetic training datasets which have the same attributes of the original images have been tested. The generated synthetic images are used to train a U-Net model, which is then used to segment the original bread dough images. The trained U-Net outperformed the previously used segmentation techniques while taking less manual effort. This automated model for data segmentation would alleviate the time-consuming aspects of experimental workflow and would open the door to perform 4D characterization experiments with smaller time steps.

Identifiants

pubmed: 33650569
pii: S1600577521001314
doi: 10.1107/S1600577521001314
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

566-575

Auteurs

Salah Ali (S)

School of Engineering, RMIT University, Australia.

Sherry Mayo (S)

CSIRO Manufacturing, Clayton, Victoria, Australia.

Amirali K Gostar (AK)

School of Engineering, RMIT University, Australia.

Ruwan Tennakoon (R)

School of Science, RMIT University, Australia.

Alireza Bab-Hadiashar (A)

School of Engineering, RMIT University, Australia.

Thu MCann (T)

CSIRO Agriculture and Food, Werribee, Victoria, Australia.

Helen Tuhumury (H)

CSIRO Agriculture and Food, Werribee, Victoria, Australia.

Jenny Favaro (J)

CSIRO Agriculture and Food, Werribee, Victoria, Australia.

Classifications MeSH