Nanotechnology Now

Our NanoNews Digest Sponsors
Heifer International



Home > Press > New super-resolution method reveals fine details without constantly needing to zoom in

Left and right show false-colored electron microscopic images of the same region on the specimen. But the image on the right has been super resolved using Dr. Yu Ding's new image processing method.

CREDIT
Texas A&M University College of Engineering
Left and right show false-colored electron microscopic images of the same region on the specimen. But the image on the right has been super resolved using Dr. Yu Ding's new image processing method. CREDIT Texas A&M University College of Engineering

Abstract:
Since the early 1930s, electron microscopy has provided unprecedented access to the alien world of the extraordinarily small, revealing intricate details that are otherwise impossible to discern with conventional light microscopy. But to achieve high resolution over a large specimen area, the energy of the electron beams needs to be cranked up, which is costly and detrimental to the specimen under observation.

New super-resolution method reveals fine details without constantly needing to zoom in

College Station, TX | Posted on August 12th, 2020

Texas A&M University researchers may have found a new method to improve the quality of low-resolution electron micrographs without compromising the integrity of specimen samples. By training deep neural networks, a type of artificial intelligence algorithm, on pairs of images from the same sample but at different physical resolutions, they have found that details in lower-resolution images can be enhanced further.

"Normally, a high-energy electron beam is passed through the sample at locations where greater image resolution is desired. But with our image processing techniques, we can super resolve an entire image by using just a few smaller-sized, high-resolution images," said Dr. Yu Ding, Mike and Sugar Barnes Professor in the Wm Michael Barnes '64 Department of Industrial and Systems Engineering. "This method is less destructive since most parts of the specimen sample needn't be scanned with high-energy electron beams."

The researchers published their image processing technique in Institute of Electric and Electronics Engineers' Transactions on Image Processing in June.

Unlike in light microscopy where photons, or tiny packets of light, are used to illuminate an object, in electron microscopy, a beam of electrons is utilized. The electrons reflected from or passing through the object are then collected to form an image, called the electron micrograph.

Thus, the energy of the electron beams plays a crucial role in determining the resolution of images. That is, the higher the energy electrons, the better the resolution. However, the risk of damaging the specimen also increases, similar to how ultraviolet rays, which are the more energetic relatives of visible light, can damage sensitive materials like the skin.

"There's always that dilemma for scientists," said Ding. "To maintain the specimen's integrity, high-energy electron beams are used sparingly. But if one does not use energetic beams, high-resolution or the ability to see at finer scales becomes limited."

But there are ways to get high resolution or super resolution using low-resolution images. One method involves using multiple low-resolution images of essentially the same region. Another method learns common patterns between small image patches and uses unrelated high-resolution images to enhance existing low-resolution images.

These methods almost exclusively use natural light images instead of electron micrographs. Hence, they run into problems for super-resolving electron micrographs since the underlying physics for light and electron microscopy is different, Ding explained.

The researchers turned to pairs of low- and high-resolution electron microscopic images for a given sample. Although these types of pairs are not very common in public image databases, they are relatively common in materials science research and medical imaging.

For their experiments, Ding and his team first took a low-resolution image of a specimen and then subjected roughly 25% of the area under observation to high-energy electron beams to get a high-resolution image. The researchers noted that the information in the high-resolution and low-resolution image pair are very tightly correlated. They said that this property can be leveraged even though the available dataset might be small.

For their analyses, Ding and his team used 22 pairs of images of materials infused with nanoparticles. They then divided the high-resolution image and its equivalent area in the low-resolution image into three by three subimages. Next, each subimage pair was used to "self-train" deep neural networks. Post-training, their algorithm became familiar at recognizing image features, such as edges.

When they tested the trained deep neural network on a new location on the low-resolution image for which there was no high-resolution counterpart, they found that their algorithm could enhance features that were hard to discern by up to 50%.

Although their image processing technique shows a lot of promise, Ding noted that it still requires a lot of computational power. In the near future, his team will be directing their efforts in developing algorithms that are much faster and can be supported by lesser computing hardware.

"Our paired image processing technique reveals details in low-resolution images that were not discernable before," said Ding. "We are all familiar with the magic wand feature on our smartphones. It makes the image clearer. What we aim to do in the long run is to provide the research community a similar convenient tool for enhancing electron micrographs."

###

Other contributors to this research include Dr. Yanjun Qian from Virginia Commonwealth University, Jiaxi Xu from the industrial and systems engineering department at Texas A&M and Dr. Lawrence Drummy from the Air Force Research Laboratory.

This research was funded by the Air Force Office of Scientific Research Dynamic Data and Information Processing program (formerly known as the Dynamic Data Driven Applications System program) grants and the Texas A&M X-Grant program.

####

For more information, please click here

Contacts:
Amy Halbert

Copyright © Texas A&M University

If you have a comment, please Contact us.

Issuers of news releases, not 7th Wave, Inc. or Nanotechnology Now, are solely responsible for the accuracy of the content.

Bookmark:
Delicious Digg Newsvine Google Yahoo Reddit Magnoliacom Furl Facebook

Related Links

RELATED JOURNAL ARTICLE:

Related News Press

Imaging

New material to make next generation of electronics faster and more efficient With the increase of new technology and artificial intelligence, the demand for efficient and powerful semiconductors continues to grow November 8th, 2024

News and information

Beyond wires: Bubble technology powers next-generation electronics:New laser-based bubble printing technique creates ultra-flexible liquid metal circuits November 8th, 2024

Nanoparticle bursts over the Amazon rainforest: Rainfall induces bursts of natural nanoparticles that can form clouds and further precipitation over the Amazon rainforest November 8th, 2024

Nanotechnology: Flexible biosensors with modular design November 8th, 2024

Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024

Govt.-Legislation/Regulation/Funding/Policy

Giving batteries a longer life with the Advanced Photon Source: New research uncovers a hydrogen-centered mechanism that triggers degradation in the lithium-ion batteries that power electric vehicles September 13th, 2024

New discovery aims to improve the design of microelectronic devices September 13th, 2024

Physicists unlock the secret of elusive quantum negative entanglement entropy using simple classical hardware August 16th, 2024

Single atoms show their true color July 5th, 2024

Possible Futures

Nanotechnology: Flexible biosensors with modular design November 8th, 2024

Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024

Turning up the signal November 8th, 2024

Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024

Discoveries

Breaking carbon–hydrogen bonds to make complex molecules November 8th, 2024

Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024

Turning up the signal November 8th, 2024

Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024

Announcements

Nanotechnology: Flexible biosensors with modular design November 8th, 2024

Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024

Turning up the signal November 8th, 2024

Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024

Interviews/Book Reviews/Essays/Reports/Podcasts/Journals/White papers/Posters

Beyond wires: Bubble technology powers next-generation electronics:New laser-based bubble printing technique creates ultra-flexible liquid metal circuits November 8th, 2024

Nanoparticle bursts over the Amazon rainforest: Rainfall induces bursts of natural nanoparticles that can form clouds and further precipitation over the Amazon rainforest November 8th, 2024

Nanotechnology: Flexible biosensors with modular design November 8th, 2024

Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024

Tools

New material to make next generation of electronics faster and more efficient With the increase of new technology and artificial intelligence, the demand for efficient and powerful semiconductors continues to grow November 8th, 2024

Turning up the signal November 8th, 2024

Quantum researchers cause controlled ‘wobble’ in the nucleus of a single atom September 13th, 2024

Faster than one pixel at a time – new imaging method for neutral atomic beam microscopes developed by Swansea researchers August 16th, 2024

Military

Single atoms show their true color July 5th, 2024

NRL charters Navy’s quantum inertial navigation path to reduce drift April 5th, 2024

What heat can tell us about battery chemistry: using the Peltier effect to study lithium-ion cells March 8th, 2024

The Access to Advanced Health Institute receives up to $12.7 million to develop novel nanoalum adjuvant formulation for better protection against tuberculosis and pandemic influenza March 8th, 2024

Artificial Intelligence

New quantum encoding methods slash circuit complexity in machine learning November 8th, 2024

Rice research could make weird AI images a thing of the past: New diffusion model approach solves the aspect ratio problem September 13th, 2024

Simulating magnetization in a Heisenberg quantum spin chain April 5th, 2024

Researchers’ approach may protect quantum computers from attacks March 8th, 2024

NanoNews-Digest
The latest news from around the world, FREE




  Premium Products
NanoNews-Custom
Only the news you want to read!
 Learn More
NanoStrategies
Full-service, expert consulting
 Learn More











ASP
Nanotechnology Now Featured Books




NNN

The Hunger Project