Saved in:
Bibliographic Details
Main Authors: Raghavendran, Ganesh, Han, Bing, Adekogbe, Fortune, Bai, Shuang, Lu, Bingyu, Wu, William, Zhang, Minghao, Meng, Ying Shirley
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.01928
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908272731095040
author Raghavendran, Ganesh
Han, Bing
Adekogbe, Fortune
Bai, Shuang
Lu, Bingyu
Wu, William
Zhang, Minghao
Meng, Ying Shirley
author_facet Raghavendran, Ganesh
Han, Bing
Adekogbe, Fortune
Bai, Shuang
Lu, Bingyu
Wu, William
Zhang, Minghao
Meng, Ying Shirley
contents In the domain of battery research, the processing of high-resolution microscopy images is a challenging task, as it involves dealing with complex images and requires a prior understanding of the components involved. The utilization of deep learning methodologies for image analysis has attracted considerable interest in recent years, with multiple investigations employing such techniques for image segmentation and analysis within the realm of battery research. However, the automated analysis of high-resolution microscopy images for detecting phases and components in composite materials is still an underexplored area. This work proposes a novel workflow for detecting components and phase segmentation from raw high resolution transmission electron microscopy (TEM) images using a trained U-Net segmentation model. The developed model can expedite the detection of components and phase segmentation, diminishing the temporal and cognitive demands associated with scrutinizing an extensive array of TEM images, thereby mitigating the potential for human errors. This approach presents a novel and efficient image analysis approach with broad applicability beyond the battery field and holds potential for application in other related domains characterized by phase and composition distribution, such as alloy production.
format Preprint
id arxiv_https___arxiv_org_abs_2410_01928
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deep learning assisted high resolution microscopy image processing for phase segmentation in functional composite materials
Raghavendran, Ganesh
Han, Bing
Adekogbe, Fortune
Bai, Shuang
Lu, Bingyu
Wu, William
Zhang, Minghao
Meng, Ying Shirley
Computer Vision and Pattern Recognition
In the domain of battery research, the processing of high-resolution microscopy images is a challenging task, as it involves dealing with complex images and requires a prior understanding of the components involved. The utilization of deep learning methodologies for image analysis has attracted considerable interest in recent years, with multiple investigations employing such techniques for image segmentation and analysis within the realm of battery research. However, the automated analysis of high-resolution microscopy images for detecting phases and components in composite materials is still an underexplored area. This work proposes a novel workflow for detecting components and phase segmentation from raw high resolution transmission electron microscopy (TEM) images using a trained U-Net segmentation model. The developed model can expedite the detection of components and phase segmentation, diminishing the temporal and cognitive demands associated with scrutinizing an extensive array of TEM images, thereby mitigating the potential for human errors. This approach presents a novel and efficient image analysis approach with broad applicability beyond the battery field and holds potential for application in other related domains characterized by phase and composition distribution, such as alloy production.
title Deep learning assisted high resolution microscopy image processing for phase segmentation in functional composite materials
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.01928