Treffer: DLSIA: Deep Learning for Scientific Image Analysis.

Title:
DLSIA: Deep Learning for Scientific Image Analysis.
Source:
Journal of Applied Crystallography; vol 57, iss Pt 2; 0021-8898
Publisher Information:
eScholarship, University of California 2024-04-01
Document Type:
E-Ressource Electronic Resource
Availability:
Open access content. Open access content
public
Note:
application/pdf
Journal of Applied Crystallography vol 57, iss Pt 2 0021-8898
Other Numbers:
CDLER oai:escholarship.org:ark:/13030/qt966220w4
qt966220w4
https://escholarship.org/uc/item/966220w4
https://escholarship.org/
1432081173
Contributing Source:
UC MASS DIGITIZATION
From OAIster®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1432081173
Database:
OAIster

Weitere Informationen

DLSIA (Deep Learning for Scientific Image Analysis) is a Python-based machine learning library that empowers scientists and researchers across diverse scientific domains with a range of customizable convolutional neural network (CNN) architectures for a wide variety of tasks in image analysis to be used in downstream data processing. DLSIA features easy-to-use architectures, such as autoencoders, tunable U-Nets and parameter-lean mixed-scale dense networks (MSDNets). Additionally, this article introduces sparse mixed-scale networks (SMSNets), generated using random graphs, sparse connections and dilated convolutions connecting different length scales. For verification, several DLSIA-instantiated networks and training scripts are employed in multiple applications, including inpainting for X-ray scattering data using U-Nets and MSDNets, segmenting 3D fibers in X-ray tomographic reconstructions of concrete using an ensemble of SMSNets, and leveraging autoencoder latent spaces for data compression and clustering. As experimental data continue to grow in scale and complexity, DLSIA provides accessible CNN construction and abstracts CNN complexities, allowing scientists to tailor their machine learning approaches, accelerate discoveries, foster interdisciplinary collaboration and advance research in scientific image analysis.