Four-dimensional quantitative characterization of heterogeneous materials using in situ synchrotron radiation computed tomography can reveal 3D sub-micrometer features, particularly damage, evolving under load, leading to improved materials. However, dataset size and complexity increasingly require time-intensive and subjective semi-automatic segmentations. Here, the first deep learning (DL) convolutional neural network (CNN) segmentation of multiclass microscale damage in heterogeneous bulk materials is presented, teaching on advanced aerospace-grade composite damage using ≈65 000 (trained) human-segmented tomograms. The trained CNN machine segments complex and sparse (<<1% of volume) composite damage classes to ≈99.99% agreement, unlockin...
Human-based segmentation of tomographic images can be a tedious time-consuming task. Deep learning a...
This project aims to advance the rate of material science study by automating one highly time consum...
High performance materials, from natural bone over ancient damascene steel to modern superalloys, ty...
Four-dimensional quantitative characterization of heterogeneous materials using in situ synchrotron ...
The continuously increasing brilliance of synchrotron sources as well as the use of fast imaging det...
Carbon fiber reinforced polymer (CFRP) composites are playing an increasingly important role in mode...
In order to understand how changes to a material at the atomic and nano-scales impact the way a mate...
Microstructure-informed design approach is set to revolutionize the design of metals and alloy compo...
The continuously increasing brilliance of synchrotron sources as well as the use of fast imaging det...
This work illustrates the use of deep learning methods applied on X-ray computed tomography (XCT) da...
Commercial Co/WC/diamond composites are hard metals and very useful as a kind of tool material, for ...
Hydraulic stimulation has been a key technique in enhanced geothermal systems (EGS) and the recovery...
In recent years, state-of-the-art micromechanical systems have given researchers the ability to obse...
Recognizing materials in real-world images is a challeng-ing task. Real-world materials have rich su...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
Human-based segmentation of tomographic images can be a tedious time-consuming task. Deep learning a...
This project aims to advance the rate of material science study by automating one highly time consum...
High performance materials, from natural bone over ancient damascene steel to modern superalloys, ty...
Four-dimensional quantitative characterization of heterogeneous materials using in situ synchrotron ...
The continuously increasing brilliance of synchrotron sources as well as the use of fast imaging det...
Carbon fiber reinforced polymer (CFRP) composites are playing an increasingly important role in mode...
In order to understand how changes to a material at the atomic and nano-scales impact the way a mate...
Microstructure-informed design approach is set to revolutionize the design of metals and alloy compo...
The continuously increasing brilliance of synchrotron sources as well as the use of fast imaging det...
This work illustrates the use of deep learning methods applied on X-ray computed tomography (XCT) da...
Commercial Co/WC/diamond composites are hard metals and very useful as a kind of tool material, for ...
Hydraulic stimulation has been a key technique in enhanced geothermal systems (EGS) and the recovery...
In recent years, state-of-the-art micromechanical systems have given researchers the ability to obse...
Recognizing materials in real-world images is a challeng-ing task. Real-world materials have rich su...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
Human-based segmentation of tomographic images can be a tedious time-consuming task. Deep learning a...
This project aims to advance the rate of material science study by automating one highly time consum...
High performance materials, from natural bone over ancient damascene steel to modern superalloys, ty...