The Institute of Electronics and Information Engineers
시간 | 프로그램 | 강연자 |
09:00 – 10:00 | Recent Trends in Biometric: Open Set Presentation Attack Detection | Kevin W. Bowyer 교수 (미국 노트르담 대학) |
10:00 – 11:00 | Efficient Deep Learning at Scale: Hardware and Software | Yiran Chen 교수 (미국 듀크 대학) |
시간 | 프로그램 | 강연자 |
09:00 – 10:00 | Quantifying Uncertainty in Machine Learning Based Sensing | Shervin Shirmohammadi 교수 (캐나다 Ottawa 대학) |
10:00 – 11:00 | Trends for Wearable and Medical Devices | Subhas Mukhopadhyay 교수 (호주 Macquarie 대학) |
강연자 | 강연 내용 |
Kevin W. Bowyer 교수 (미국 노트르담 대학) |
Recent Trends in Biometric: Open Set Presentation Attack Detection |
Biometric presentation attack detection is made especially difficult because of its open-set nature in the real world. The current highest-accuracy algorithms for iris presentation attack detection use deep learning approaches. We show a novel approach to achieve greater accuracy in deep learning from limited training data using human-aided saliency maps. Related material: https://arxiv.org/pdf/2105.03492.pdf |
|
Yiran Chen 교수 (미국 듀크 대학) | Efficient Deep Learning at Scale: Hardware and Software |
The rapid growth of modern neural network models’ scale generates ever-increasing demands for high computing power of Artificial Intelligence (AI) systems. Many specialized computing devices have been also deployed in the AI systems, forming a truly application-driven heterogeneous computing platform. This talk discusses the importance of hardware/software co-design in the development of AI computing systems. We first use resistive memory based Neural Network (NN) accelerators to illustrate the design philosophy of heterogeneous AI computing systems, and then present several hardware-friendly neural network model compression techniques. We also extend our discussions to distributed systems and briefly introduce the automation of the co-design flow, e.g., neural architecture search. A research roadmap of our relevant research is given at the end of the talk. | |
Shervin Shirmohammadi 교수 (캐나다 Ottawa 대학) | Quantifying Uncertainty in Machine Learning Based Sensing |
Like any science and engineering field, Instrumentation and Measurement (I&M) including sensors are currently experiencing the impact of the recent rise of Applied AI and in particular Machine Learning (ML). In fact the relationship between I&M and ML has reached new levels: sensors are used to measure and collect data, which is used to train an ML model, which is then used in a sensor system or application. Uncertainty is accumulated at every stage, and quantifying it is crucial. But I&M and ML use terminology that sometimes sound or look similar, though they might only have a marginal relationship or even be false friends. Therefore, understanding the terminology used by both communities is of crucial importance to understand the influences of ML and I&M in each other. In this talk, we will give an overview of ML’s contribution to a sensor’s measurement error, and how to avoid confusion with the said terminology in order to better understand the application of ML in sensor measurements. We then use that understanding and terminology to show how to quantify the uncertainty introduced by ML, specifically Deep learning (DL), in DL-based sensor systems and applications. |
|
Subhas Mukhopadhyay 교수 (호주 Macquarie 대학) | Trends for Wearable and Medical Devices |
An increase in world population along with a significant aging portion is forcing rapid rises in healthcare costs. The healthcare system is going through a transformation in which continuous monitoring of inhabitants is possible even without hospitalization. The advancement of sensing technologies, embedded systems, wireless communication technologies, nano-technologies, and miniaturization makes it possible to develop smart medical systems to monitor activities of human beings continuously. Wearable sensors monitor physiological parameters continuously along with detect other symptoms such as any abnormal and/or unforeseen situations which need immediate attention. Therefore, necessary help can be provided in times of dire need. This seminar reviews the latest reported systems and the trends on wearable and medical devices to monitor activities of humans and issues to be addressed to tackle the challenges. |
강연자 | 약력 |
Kevin W. Bowyer 교수 (미국 노트르담 대학) |
Kevin Bowyer is the Schubmehl-Prein Family Professor of Computer Science and Engineering at the University of Notre Dame. He has served as EIC of the IEEE Transactions on Biometrics, Behavior, and Identity Science and the IEEE Transactions on Pattern Analysis and Machine Intelligence, as well as General Chair or Program Chair of conferences such as Computer Vision and Pattern Recognition (CVPR), Winter Conference on Applications of Computer Vision (WACV), and Face and Gesture Recognition (FG), Biometrics Theory, Applications and Systems (BTAS) and International Joint Conference on Biometrics (IJCB). Professor Bowyer is a Fellow of the IAPR, IEEE and AAAS. |
Yiran Chen 교수 (미국 듀크 대학) | Yiran Chen received B.S (1998) and M.S. (2001) from Tsinghua University and Ph.D. (2005) from Purdue University. After five years in industry, he joined University of Pittsburgh in 2010 as Assistant Professor and then was promoted to Associate Professor with tenure in 2014, holding Bicentennial Alumni Faculty Fellow. He is now the Professor of the Department of Electrical and Computer Engineering at Duke University and serving as the director of the NSF AI Institute for Edge Computing Leveraging the Next-generation Networks (Athena) and the NSF Industry–University Cooperative Research Center (IUCRC) for Alternative Sustainable and Intelligent Computing (ASIC), and the co-director of Duke Center for Computational Evolutionary Intelligence (CEI). His group focuses on the research of new memory and storage systems, machine learning and neuromorphic computing, and mobile computing systems. Dr. Chen has published 1 book and about 500 technical publications and has been granted 96 US patents. He has served as the associate editor of a dozen international academic transactions/journals and served on the technical and organization committees of more than 60 international conferences. He is now serving as the Editor-in-Chief of the IEEE Circuits and Systems Magazine. He received seven best paper awards, one best poster award, and fifteen best paper nominations from international conferences and workshops. He received many professional awards and is the distinguished lecturer of IEEE CEDA (2018-2021). He is a Fellow of the ACM and IEEE and now serves as the chair of ACM SIGDA. |
Shervin Shirmohammadi 교수 (캐나다 Ottawa 대학) | Shervin Shirmohammadi received his Ph.D. in Electrical Engineering in 2000 from the University of Ottawa, Canada, where he is currently a Professor with the School of Electrical Engineering and Computer Science. He is the Director of the DISCOVER Lab, doing research in measurement methods and Applied AI for multimedia and networking systems. The results of his research, funded by more than $26 million from public and private sectors, include 400 publications, 3 Best Paper awards, over 70 researchers trained at the postdoctoral, PhD, and Master’s levels, 30 patents and technology transfers to the private sector, and a number of awards. He is the Editor-in-Chief of the IEEE Transactions on Instrumentation and Measurement, and was also the Associate Editor-in-Chief of IEEE Instrumentation and Measurement Magazine in 2014 and 2015, and is currently on its editorial board. He has been an IEEE Instrumentation and Measurement Society AdCom member since 2014, served as the Vice President of its Membership Development Committee from 2014 to 2017, and was a member of the IEEE I2MTC Board of Directors from 2014 to 2016. Dr. Shirmohammadi is an IEEE Fellow for contributions to multimedia systems and network measurements, winner of the 2019 George S. Glinski Award for Excellence in Research, a Senior Member of the ACM, a University of Ottawa Gold Medalist, and a licensed Professional Engineer in Ontario. |
Subhas Mukhopadhyay 교수 (호주 Macquarie 대학) | Subhas Mukhopadhyay (M’97, SM’02, F’11) holds a B.E.E. (gold medallist), M.E.E., Ph.D. (India) and Doctor of Engineering (Japan). He has over 31 years of teaching, industrial and research experience. Currently he is working as a Professor of Mechanical/Electronics Engineering, Macquarie University, Australia and is the Discipline Leader of the Mechatronics Engineering Degree Programme. He is also the Director of International Engagement for the School of Engineering of Macquarie University. His fields of interest include Smart Sensors and sensing technology, instrumentation techniques, wireless sensors and network (WSN), Internet of Things (IoT), wearable sensors and medical devices. He has supervised over 40 postgraduate students and over 100 Honours students. He has examined over 70 postgraduate theses. He has published over 450 papers in different international journals and conference proceedings, written ten books and fifty two book chapters and edited eighteen conference proceedings. He has also edited thirty five books with Springer-Verlag and thirty two journal special issues. He has been cited so far 13933 times and has a h-index of 58. He has received various awards, most notably: the Australian Research Field Leader in Engineering and Computer Science 2020; Distinguished Lecturer, IEEE Sensors Council 2020-2022; Outstanding Volunteer by IEEE R10, 2019; World Famous Professor by Government of Indonesia, 2018; Certificate of Distinction from IEEE Sensors Council, 2017; IETE R.S. Khandpur Award – India, 2016; Best Performing Topical Editor of IEEE Sensors Journal from 2013 to 2018, six years consecutively. He has organized over 20 international conferences as either General Chairs/co-chairs or Technical Programme Chair. He has delivered 389 presentations including keynote, invited, tutorial and special lectures. He is a Fellow of IEEE (USA), a Fellow of IET (UK), a Fellow of IETE (India), a Topical Editor of IEEE Sensors journal, an associate editor of IEEE Transactions on Instrumentation and Measurements, and IEEE Review of Biomedical Engineering. He is the Editor-in-Chief of the International Journal on Smart Sensing and Intelligent Systems and Springer Natura on Computer Science. He is a Distinguished Lecturer of the IEEE Sensors Council from 2017 to 2022. He is the Founding Chair of the IEEE Sensors Council New South Wales Chapter. More details can be available at: https://researchers.mq.edu.au/en/persons/subhas-mukhopadhyay https://scholar.google.com.au/citations?hl=en&user=8p-BvWIAAAAJ https://orcid.org/0000-0002-8600-5907 |
(우 : 06130) 서울특별시 강남구 테헤란로7길 22 (역삼동, 과학기술회관 1관 907호)
사업자등록번호 : 220-82-01685/(사)대한전자공학회 대표 : 백광현
TEL. 02-553-0255~7/ FAX. 02-562-4753 /EMAIL. ieie@theieie.org
COPYRIGHT ⓒ IEIE ALL RIGHTS RESERVED.