logo
Loading...
A deep learned nanowire segmentation model using synthetic data augmentation

Chemistry

A deep learned nanowire segmentation model using synthetic data augmentation

B. Lin, N. Emami, et al.

Discover how Binbin Lin, Nima Emami, David A. Santos, Yuting Luo, Sarbajit Banerjee, and Bai-Xiang Xu harnessed deep learning to revolutionize particle segmentation of V₂O₅ nanowires using synthetic images. Their innovative approach successfully tackles real-world challenges in spectromicroscopy, paving the way for reliability in materials science.... show more
Abstract
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 spectromicroscopy images of complex nanowires in overlapped networks and provide reliable statistical information. The model can further be used to segment nanowires in scanning electron microscopy images, which are fundamentally different from the training dataset known to the model. The proposed methodology can be extended to any optical intensity-based images of variable particle morphology, material class, and beyond.
Publisher
npj Computational Materials
Published On
Apr 28, 2022
Authors
Binbin Lin, Nima Emami, David A. Santos, Yuting Luo, Sarbajit Banerjee, Bai-Xiang Xu
Tags
automated particle segmentation
deep learning
Mask R-CNN
vanadium pentoxide
spectromicroscopy
nanowires
feature analysis
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny