News Release

DGIST undergraduate research team presents research article at the IEEE, the most authoritative international conference

Reports and Proceedings

DGIST (Daegu Gyeongbuk Institute of Science and Technology)

DGIST Undergraduate Research Team Presents Research Article at the IEEE, the Most Authoritative International Conference

image: 

DGIST Undergraduate Research Team Presents Research Article at the IEEE, the Most Authoritative International Conference

view more 

Credit: DGIST Undergraduate Research Team Presents Research Article at the IEEE, the Most Authoritative International Conference

□ On Wednesday October 11, it was announced that a research team (Professor Jae-sok Yu of the Department of Robotics and Mechatronics Engineering in the role of advisor and PhD student Dong-gyu Jeong) comprising junior undergraduate students (Hye-min Yang and Kyung-eun Lee) at the Daegu Gyeongbuk Institute of Science and Technology (DGIST; President Young Kuk) gave a presentation at the Institute of Electrical and Electronics Engineers (IEEE) International Ultrasonic Symposium, the world's largest conference in electrical and electronic engineering.

 

□ As an exercise in self-supervised learning, the research team successfully developed a deep learning model-based technology that efficiently removes noise from photoacoustic microscopes.

 

□ Photoacoustic microscopy is a technique that detects photoacoustic signals generated by tissues irradiated with a short laser to observe the optical properties of deep tissues in high resolution. However, the high-speed laser used for scanning has low energy, which leads to small photoacoustic signals and electrical noise, limiting image quality.

 

□ Deep learning models have great potential as a technique to effectively remove complex noise. With many medical imaging systems, however, it is difficult to obtain noise-free reference images, and thus, properly implementing deep learning has been difficult.

 

□ Hence, as an exercise in self-supervised learning, a research team of DGIST undergraduate students proposed a deep learning model that can effectively remove noise from noisy images. To validate the proposed model’s clinical efficiency, they captured images of rats’ ears with the help of Professor Chang-ho Lee of the Department of Nuclear Medicine at Chonnam National University Hwasun Hospital. The results confirmed that the deep learning model effectively removed noise in real-world clinical data.

 

□ The research was conducted as part of the Undergraduate Group Research Program (UGRP). The UGRP is a regular curriculum at DGIST, in which undergraduate students complete a research project independently, demonstrating self-direction.

 

□ First author and DGIST undergraduate student Hye-min Yang said, "Thanks to support from the UGRP and our advisor, we were able to design and conduct an experiment and give a presentation at an international conference. The UGRP taught us not only how to plan and conduct research but also how to develop the basic qualities researchers need."

 

□ Professor Sang-hyun Park of the Department of Robotics and Mechatronics Engineering, who took charge of research advising under the UGRP, said, "By independently designing, conducting, and concluding research and then writing a research article, these undergraduate students have made an extraordinary achievement. This experience will be a great asset in their future research activities."

 

□ The research was funded by the National Research Foundation of Korea’s Outstanding New Research Project.


Disclaimer: AAAS and EurekAlert! are not responsible for the accuracy of news releases posted to EurekAlert! by contributing institutions or for the use of any information through the EurekAlert system.