Keynote

Denis Caromel
{"title":"Keynote","authors":"Denis Caromel","doi":"10.1109/KST57286.2023.10086847","DOIUrl":null,"url":null,"abstract":"This talk gives an overview of progress and challenges in learnable image encryption with a secret key for deep neural networks (DNNs). Learnable encryption with a secret key enables us not only to protect visual information on plain images but also to embed unique features controlled with a key into images and models. Various applications of such encryption have been developed by using these properties. In this talk, we first focus privacy-preserving image classification tasks with learnable encryption, and then such encryption is demonstrated to give a new insight to adversarially robust defenses and model protection. Finally, we discuss future prospects for reliable deep leaning. Biography Hitoshi Kiya is a Professor of the Department of Computer Science at Tokyo Metropolitan University, Japan. He received the B.E. and M.E. degrees from the Nagaoka University of Technology, Japan, in 1980 and 1982, respectively, and the Dr.Eng. degree from Tokyo Metropolitan University in 1987. In 1982, he joined Tokyo Metropolitan University, where he became a Full Professor in 2000. From 1995 to 1996, he attended the University of Sydney, Australia, as a Visiting Fellow. He is a Life Fellow of IEEE, and a Fellow of IEICE, ITE and AAIA. He served as the President of APSIPA, and the Regional Director-at-Large for Region 10 of the IEEE Signal Processing Society. He was also the President of the IEICE Engineering Sciences Society. He has organized a lot of international conferences in such roles as the TPC Chair of IEEE ICASSP 2012 and as the General Co-Chair of IEEE ISCAS 2019. He has received numerous awards, including 12 best paper awards. 20 23 1 5t h In te rn at io na l C on fe re nc e on K no w le dg e an d Sm ar t T ec hn ol og y (K ST ) | 9 78 -1 -6 65 477 12 -3 /2 3/ $3 1. 00 © 20 23 IE EE | D O I: 10 .1 10 9/ K ST 57 28 6. 20 23 .1 00 86 84 7 2023 15th International Conference on Knowledge and Smart Technology (KST) __________________________________________________________________________________ XVI Computational Intelligence in Biomedical Engineering Assoc. Prof. Sansanee Auephanwiriyakul, Ph.D. Computer Engineering Department, Faculty of Engineering Biomedical Engineering Institute, Chiang Mai University, Thailand Abstract Computational Intelligence (CI) relies on and combines several algorithms in fuzzy systems, neural networks, evolutionary computation, swarm intelligence, fractals, chaos theory, artificial immune systems, wavelets, etc., to produce an algorithm that is intelligent somehow. CI has been utilized in many applications for several years. One of the areas that CI has an impact on is the area of biomedical engineering, e.g., medical image processing, medical signal processing and biometrics. One of the CI tools used in those mentioned application is classification or sometimes called decision making. The major area in the classification is to develop a classifier, including, feature generation and selection. The fuzzy set theory is one of the main parts in CI that has been utilized in generating features and developing a classifier. In this talk, feature generation methods and classifier methods based on the fuzzy set theory will be presented. We also show those methods on real application, including, medical image diagnosis, medical signal diagnosis, and biometrics. Computational Intelligence (CI) relies on and combines several algorithms in fuzzy systems, neural networks, evolutionary computation, swarm intelligence, fractals, chaos theory, artificial immune systems, wavelets, etc., to produce an algorithm that is intelligent somehow. CI has been utilized in many applications for several years. One of the areas that CI has an impact on is the area of biomedical engineering, e.g., medical image processing, medical signal processing and biometrics. One of the CI tools used in those mentioned application is classification or sometimes called decision making. The major area in the classification is to develop a classifier, including, feature generation and selection. The fuzzy set theory is one of the main parts in CI that has been utilized in generating features and developing a classifier. In this talk, feature generation methods and classifier methods based on the fuzzy set theory will be presented. We also show those methods on real application, including, medical image diagnosis, medical signal diagnosis, and biometrics. Biography B.Eng. (Hons.) degree in electrical engineering from the Chiang Mai University, Thailand (1993), the M.S. degree in electrical and computer engineering and Ph.D. degree in computer engineering and computer science, both from the University of Missouri, Columbia, in 1996, and 2000, respectively. After receiving her Ph.D. degree, she worked as a post-doctoral fellow at the Computational Intelligence Laboratory, University of Missouri-Columbia. She is currently an Associate Professor in the Department of Computer Engineering and a deputy director of the Biomedical Engineering Institute, Chiang Mai University, Thailand. Dr. Auephanwiriyakul is a senior member of the Institute of Electrical and Electronics Engineers (IEEE). She is an Associate Editor of the IEEE Transactions on Fuzzy System, the IEEE Transactions on Neural Networks and Learning Systems, IEEE Computational Intelligence Magazine, IEEE Transactions on Artificial Intelligence, Engineering Applications of Artificial Intelligence, and ECTI Transactions on Computer and Information Technology. She was a general chair of the IEEE International Conference on Computational Intelligence in Bioinformatics and Computational Biology (CIBCB 2016). She will be a general chair of the IEEE World Congress on Computational Intelligence (WCCI) 2024 (IEEE International Conference on Fuzzy Systems 2024). She was a Technical Program Chair, Organizing Committee in several major conferences including the IEEE International, Conference Fuzzy Systems. She is also a member of several important IEEE CIS technical committees. 2023 15th International Conference on Knowledge and Smart Technology (KST) __________________________________________________________________________________ XVII Digital transformation of Traditional medicine to meet the era of AI medicine Sang-Hun Lee, M.D. Korea Institute of Oriental Medicine, Daejeon, Republic of Korea Abstract With the development of AI technology, AI is being introduced in many areas such as drug development and imaging diagnosis. However, the reality is that there are far more areas that have not yet been combined compared to the medical area where AI is being combined already. These differences appear depending on how prepared high-quality big data well the medical practice is quantitatively defined and the measurement technology is standard In order to solve these problems, it is necessary to redefine the medical measurement parameters used in diagnosis so that they can be changed into digitized measurement values and to standardize devices that can measure them. When these works are done, we can make medical AI and also can implement AI-Ready Data Practices to Promote Equitable, Machine Readable, and Well-Defined clinical Big Data With the development of AI technology, AI is being introduced in many areas such as drug development and imaging diagnosis. However, the reality is that there are far more areas that have not yet been combined compared to the medical area where AI is being combined already. 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His primary research areas are standardization and scientificization of Traditional medicine devices, biomarkers, and medical information. He is a member of the Young Korean Academy of Science and Technology, and education director at the Society for Meridian and Acupoint. 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引用次数: 0

Abstract

This talk gives an overview of progress and challenges in learnable image encryption with a secret key for deep neural networks (DNNs). Learnable encryption with a secret key enables us not only to protect visual information on plain images but also to embed unique features controlled with a key into images and models. Various applications of such encryption have been developed by using these properties. In this talk, we first focus privacy-preserving image classification tasks with learnable encryption, and then such encryption is demonstrated to give a new insight to adversarially robust defenses and model protection. Finally, we discuss future prospects for reliable deep leaning. Biography Hitoshi Kiya is a Professor of the Department of Computer Science at Tokyo Metropolitan University, Japan. He received the B.E. and M.E. degrees from the Nagaoka University of Technology, Japan, in 1980 and 1982, respectively, and the Dr.Eng. degree from Tokyo Metropolitan University in 1987. In 1982, he joined Tokyo Metropolitan University, where he became a Full Professor in 2000. From 1995 to 1996, he attended the University of Sydney, Australia, as a Visiting Fellow. He is a Life Fellow of IEEE, and a Fellow of IEICE, ITE and AAIA. He served as the President of APSIPA, and the Regional Director-at-Large for Region 10 of the IEEE Signal Processing Society. He was also the President of the IEICE Engineering Sciences Society. He has organized a lot of international conferences in such roles as the TPC Chair of IEEE ICASSP 2012 and as the General Co-Chair of IEEE ISCAS 2019. He has received numerous awards, including 12 best paper awards. 20 23 1 5t h In te rn at io na l C on fe re nc e on K no w le dg e an d Sm ar t T ec hn ol og y (K ST ) | 9 78 -1 -6 65 477 12 -3 /2 3/ $3 1. 00 © 20 23 IE EE | D O I: 10 .1 10 9/ K ST 57 28 6. 20 23 .1 00 86 84 7 2023 15th International Conference on Knowledge and Smart Technology (KST) __________________________________________________________________________________ XVI Computational Intelligence in Biomedical Engineering Assoc. Prof. Sansanee Auephanwiriyakul, Ph.D. Computer Engineering Department, Faculty of Engineering Biomedical Engineering Institute, Chiang Mai University, Thailand Abstract Computational Intelligence (CI) relies on and combines several algorithms in fuzzy systems, neural networks, evolutionary computation, swarm intelligence, fractals, chaos theory, artificial immune systems, wavelets, etc., to produce an algorithm that is intelligent somehow. CI has been utilized in many applications for several years. One of the areas that CI has an impact on is the area of biomedical engineering, e.g., medical image processing, medical signal processing and biometrics. One of the CI tools used in those mentioned application is classification or sometimes called decision making. The major area in the classification is to develop a classifier, including, feature generation and selection. The fuzzy set theory is one of the main parts in CI that has been utilized in generating features and developing a classifier. In this talk, feature generation methods and classifier methods based on the fuzzy set theory will be presented. We also show those methods on real application, including, medical image diagnosis, medical signal diagnosis, and biometrics. Computational Intelligence (CI) relies on and combines several algorithms in fuzzy systems, neural networks, evolutionary computation, swarm intelligence, fractals, chaos theory, artificial immune systems, wavelets, etc., to produce an algorithm that is intelligent somehow. CI has been utilized in many applications for several years. One of the areas that CI has an impact on is the area of biomedical engineering, e.g., medical image processing, medical signal processing and biometrics. One of the CI tools used in those mentioned application is classification or sometimes called decision making. The major area in the classification is to develop a classifier, including, feature generation and selection. The fuzzy set theory is one of the main parts in CI that has been utilized in generating features and developing a classifier. In this talk, feature generation methods and classifier methods based on the fuzzy set theory will be presented. We also show those methods on real application, including, medical image diagnosis, medical signal diagnosis, and biometrics. Biography B.Eng. (Hons.) degree in electrical engineering from the Chiang Mai University, Thailand (1993), the M.S. degree in electrical and computer engineering and Ph.D. degree in computer engineering and computer science, both from the University of Missouri, Columbia, in 1996, and 2000, respectively. After receiving her Ph.D. degree, she worked as a post-doctoral fellow at the Computational Intelligence Laboratory, University of Missouri-Columbia. She is currently an Associate Professor in the Department of Computer Engineering and a deputy director of the Biomedical Engineering Institute, Chiang Mai University, Thailand. Dr. Auephanwiriyakul is a senior member of the Institute of Electrical and Electronics Engineers (IEEE). She is an Associate Editor of the IEEE Transactions on Fuzzy System, the IEEE Transactions on Neural Networks and Learning Systems, IEEE Computational Intelligence Magazine, IEEE Transactions on Artificial Intelligence, Engineering Applications of Artificial Intelligence, and ECTI Transactions on Computer and Information Technology. She was a general chair of the IEEE International Conference on Computational Intelligence in Bioinformatics and Computational Biology (CIBCB 2016). She will be a general chair of the IEEE World Congress on Computational Intelligence (WCCI) 2024 (IEEE International Conference on Fuzzy Systems 2024). She was a Technical Program Chair, Organizing Committee in several major conferences including the IEEE International, Conference Fuzzy Systems. She is also a member of several important IEEE CIS technical committees. 2023 15th International Conference on Knowledge and Smart Technology (KST) __________________________________________________________________________________ XVII Digital transformation of Traditional medicine to meet the era of AI medicine Sang-Hun Lee, M.D. Korea Institute of Oriental Medicine, Daejeon, Republic of Korea Abstract With the development of AI technology, AI is being introduced in many areas such as drug development and imaging diagnosis. However, the reality is that there are far more areas that have not yet been combined compared to the medical area where AI is being combined already. These differences appear depending on how prepared high-quality big data well the medical practice is quantitatively defined and the measurement technology is standard In order to solve these problems, it is necessary to redefine the medical measurement parameters used in diagnosis so that they can be changed into digitized measurement values and to standardize devices that can measure them. When these works are done, we can make medical AI and also can implement AI-Ready Data Practices to Promote Equitable, Machine Readable, and Well-Defined clinical Big Data With the development of AI technology, AI is being introduced in many areas such as drug development and imaging diagnosis. However, the reality is that there are far more areas that have not yet been combined compared to the medical area where AI is being combined already. These differences appear depending on how prepared high-quality big data well the medical practice is quantitatively defined and the measurement technology is standard In order to solve these problems, it is necessary to redefine the medical measurement parameters used in diagnosis so that they can be changed into digitized measurement values and to standardize devices that can measure them. When these works are done, we can make medical AI and also can implement AI-Ready Data Practices to Promote Equitable, Machine Readable, and Well-Defined clinical Big Data Biography Dr. Sanghun Lee is a Principal Researcher at KIOM in Korea and a professor at the University of Science and Technology. After majoring in Korean Traditional Medicine and working as a clinician and university research professor, he joined the Institute of Oriental Medicine in 2009 as a researcher. His primary research areas are standardization and scientificization of Traditional medicine devices, biomarkers, and medical information. He is a member of the Young Korean Academy of Science and Technology, and education director at the Society for Meridian and Acupoint. Currently, he is leading the research project of standard development as a Project leader in International Organization for Standardization Technical Committee 249 (Traditional Chinese Medicine) about Traditional Medicine devices (ISO 22213:2020, ISO 19611:2017, ISO 5227:2022, ISO 24571:2022, ISO 20487:2019)
主题
本演讲概述了深度神经网络(dnn)使用密钥进行可学习图像加密的进展和挑战。可学习的密钥加密使我们不仅可以保护普通图像上的视觉信息,还可以将密钥控制的独特功能嵌入图像和模型中。通过使用这些属性,已经开发了这种加密的各种应用程序。在这个演讲中,我们首先关注隐私保护图像分类任务与可学习的加密,然后这种加密被证明给对抗鲁棒防御和模型保护一个新的见解。最后,讨论了可靠深度学习的发展前景。木谷仁是日本东京都大学计算机科学系教授。他分别于1980年和1982年获得日本长冈工业大学(Nagaoka University of Technology)学士和硕士学位。1987年获得东京城市大学学位。1982年,他加入东京城市大学,并于2000年成为该校正教授。1995年至1996年,他作为访问学者到澳大利亚悉尼大学学习。他是IEEE的终身会员,也是IEICE、ITE和AAIA的会员。他曾担任APSIPA的主席,以及IEEE信号处理协会第10区域的区域主任。他也是IEICE工程科学学会的主席。他组织了许多国际会议,如IEEE ICASSP 2012的TPC主席和IEEE ISCAS 2019的总联合主席。他获得了许多奖项,其中包括12项最佳论文奖。[20] [23] [1] [3] [1] [3] [1] [3] [1] [3] [1] [3] [1] [3] [3] [1] [3] [1] [3] [1] [3] [1] [3] [1] [3] [1] [4] [1] [4] [1] [4] [1] [4] [1] [4] [1] [4] [1] [4] [1]00©20 23 ie ee | d o i: 10.1 10 9/ k st 57 28 6。20 23。1 00 86 84 7 2023 15日知识和智能技术国际会议(键糟 ) __________________________________________________________________________________ 在生物医学工程Assoc十六计算智能。摘要计算智能(Computational Intelligence, CI)依赖并结合模糊系统、神经网络、进化计算、群智能、分形、混沌理论、人工免疫系统、小波等算法,产生某种程度上具有智能的算法。CI已经在许多应用程序中使用了好几年。CI影响的领域之一是生物医学工程领域,例如医学图像处理、医学信号处理和生物识别。上述应用程序中使用的CI工具之一是分类,有时也称为决策制定。分类的主要领域是分类器的开发,包括特征的生成和选择。模糊集理论是CI研究的主要内容之一,已被用于特征生成和分类器的开发。本讲座将介绍基于模糊集理论的特征生成方法和分类器方法。我们还展示了这些方法的实际应用,包括医学图像诊断、医学信号诊断和生物识别。计算智能(CI)依赖并结合模糊系统、神经网络、进化计算、群体智能、分形、混沌理论、人工免疫系统、小波等算法,产生某种程度上具有智能的算法。CI已经在许多应用程序中使用了好几年。CI影响的领域之一是生物医学工程领域,例如医学图像处理、医学信号处理和生物识别。上述应用程序中使用的CI工具之一是分类,有时也称为决策制定。分类的主要领域是分类器的开发,包括特征的生成和选择。模糊集理论是CI研究的主要内容之一,已被用于特征生成和分类器的开发。本讲座将介绍基于模糊集理论的特征生成方法和分类器方法。我们还展示了这些方法的实际应用,包括医学图像诊断、医学信号诊断和生物识别。1993年获得泰国清迈大学电子工程荣誉学士学位,1996年和2000年分别获得哥伦比亚密苏里大学电子与计算机工程硕士学位和计算机工程与计算机科学博士学位。在获得博士学位后,她在密苏里大学哥伦比亚分校的计算智能实验室做博士后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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