Automated particle segmentation and feature analysis of experimental image data are indispensable for data-driven material science. Deep learning-based image segmentation algorithms are promising techniques to achieve this goal but are challenging to use due to the acquisition of a large number of training images. In the present work, synthetic images are applied, resembling the experimental images in terms of geometrical and visual features, to train the state-of-art Mask region-based convolutional neural networks to segment vanadium pentoxide nanowires, a cathode material within optical density-based images acquired using spectromicroscopy. The results demonstrate the instance segmentation power in real optical intensity-based spectromicr...
International audienceThe segmentation of tomographic images of the battery electrode is a crucial p...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
This project aims to advance the rate of material science study by automating one highly time consum...
Automated particle segmentation and feature analysis of experimental image data are indispensable fo...
Nanoparticles occur in various environments as a consequence of man-made processes, which raises con...
A wide range of techniques can be considered for segmentation of images of nanostructured surfaces. ...
Background and objective: Nanoparticles present properties that can be applied to a wide range of fi...
In the field of materials science, microscopy is the first and often only accessible method for stru...
The agglomeration causes a significant challenge to nanodielectrics. Identification of agglomerates ...
Conventional optical microscopes generally provide blurry and indistinguishable images for subwavele...
The rapidly growing use of imaging infrastructure in the energy materials domain drives significant ...
In order to understand how changes to a material at the atomic and nano-scales impact the way a mate...
Metallic nanoparticles were analysed with respect to size and shape by a machine learning approach. ...
TEM image dataset containing four nanowire morphologies of bio-derived protein nanowires and synthet...
Models contain trained model, and training code containing custom augmentations for the Detectron2 i...
International audienceThe segmentation of tomographic images of the battery electrode is a crucial p...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
This project aims to advance the rate of material science study by automating one highly time consum...
Automated particle segmentation and feature analysis of experimental image data are indispensable fo...
Nanoparticles occur in various environments as a consequence of man-made processes, which raises con...
A wide range of techniques can be considered for segmentation of images of nanostructured surfaces. ...
Background and objective: Nanoparticles present properties that can be applied to a wide range of fi...
In the field of materials science, microscopy is the first and often only accessible method for stru...
The agglomeration causes a significant challenge to nanodielectrics. Identification of agglomerates ...
Conventional optical microscopes generally provide blurry and indistinguishable images for subwavele...
The rapidly growing use of imaging infrastructure in the energy materials domain drives significant ...
In order to understand how changes to a material at the atomic and nano-scales impact the way a mate...
Metallic nanoparticles were analysed with respect to size and shape by a machine learning approach. ...
TEM image dataset containing four nanowire morphologies of bio-derived protein nanowires and synthet...
Models contain trained model, and training code containing custom augmentations for the Detectron2 i...
International audienceThe segmentation of tomographic images of the battery electrode is a crucial p...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
This project aims to advance the rate of material science study by automating one highly time consum...