Evolutionary Computation and Evolutionary Deep Learning for Image Analysis, Signal Processing and Pattern Recognition
Description
The intertwining disciplines of image analysis, signal processing and pattern recognition are major fields of computer science, computer engineering and electrical and electronic engineering, with past and on-going research covering a full range of topics and tasks, from basic research to a huge number of real-world industrial applications.
Among the techniques studied and applied within these research fields, evolutionary computation (EC) including evolutionary algorithms, swarm intelligence and other paradigms is playing an increasingly relevant role. Recently, evolutionary deep learning has also attracted very good attention to these fields. The terms Evolutionary Image Analysis and Signal Processing and Evolutionary Computer Vision are more and more commonly accepted as descriptors of a clearly defined research area and family of techniques and applications. This has also been favoured by the recent availability of environments for computer hardware and systems such as GPUs and grid/cloud/parallel computing systems, whose architecture and computation paradigm fit EC algorithms extremely well, alleviating the intrinsically heavy computational burden imposed by such techniques and allowing even for real-time applications.
The tutorial will introduce the general framework within which Evolutionary Image Analysis, Signal Processing and Pattern Recognition can be studied and applied, sketching a schematic taxonomy of the field and providing examples of successful real-world applications. The application areas to be covered will include edge detection, segmentation, object tracking, object recognition, motion detection, image classification and recognition. EC techniques to be covered will include genetic algorithms, genetic programming, particle swarm optimisation, evolutionary multi-objective optimisation as well as memetic/hybrid paradigms. We focus on the use of evolutionary deep learning ideas for image analysis --- this includes automatic learning architectures, learning parameters and transfer functions of convolutional neural networks. The use of GPU boxes will be discussed for real-time/fast object classification. We will show how such EC techniques can be effectively applied to image analysis and signal processing problems and provide promising results. Basic deep network-like approaches will also be discussed for GP, in which, in an auto-encoder fashion, parametric regression can be used to build embeddings for signals or 2D patterns.
Organizers
Stefano Cagnoni received a master's degree in electronic engineering and a Ph.D. in biomedical engineering from the University of Florence, Florence, Italy, in 1988 and 1994, respectively. He was a visiting scientist at the Massachusetts Institute of Technology, Cambridge, MA, USA, from 1993 to 1994, and then a postdoctoral fellow at the University of Florence. Since 1997, he has been with the University of Parma, Parma, Italy, where he is currently an Associate Professor of Computer Engineering. His research principally regards evolutionary algorithms applications to image analysis and processing, machine learning, and pattern recognition. Dr. Cagnoni is on the editorial board of the journals "Evolutionary Computation" and "Genetic Programming and Evolvable Machines," as well as in the IEEE CIS Task Force on Evolutionary Computer Vision and Image Processing. In 2009, he earned the "Evostar Award" for his outstanding contribution to Evolutionary Computation.
Ying Bi is currently a professor at Zhengzhou University, China. She received her PhD degree in 2020 from the Victoria University of Wellington (VUW), New Zealand. Her research focuses mainly on evolutionary computer vision and machine learning. She has published an authored book on genetic programming for image classification and over 80 papers in fully refereed journals and conferences, including IEEE TEVC, IEEE CIM, IEEE CYB, GECCO, and PPSN. She is/was served as the Associate Editor of seven journals, including IEEE TEVC and IEEE TAI. She is currently the Vice-Chair of the IEEE CIS Task Force on Evolutionary Computer Vision and Image Processing, and a member of the IEEE CIS Task Force on Evolutionary Computation for Feature Selection and Construction. She is serving as the workshop chair of IEEE CEC 2024, student affair chair of GECCO 2023 and GECCO 2024, organizer of the EDMML workshop in IEEE ICDM 2021-2024, and co-chair of the special session on ECVIP at IEEE CEC 2023, 2022 and IEEE CIMSIVP at IEEE SSCI 2023, 2022. She is served as Chair of IEEE CIS Women in Computational Intelligence Subcommittee.
Yanan Sun is a professor at Sichuan University, China. He has been a research postdoc at Victoria University of Wellington, New Zealand. His research focuses mainly on evolutionary neural architecture search. He has published >70 papers in fully referred journals and conferences, including IEEE TEVC, IEEE TNNLS, IEEE TCYB, NeurIPS, CVPR, ICCV, GECCO, and CEC. 12 out of the published papers have been selected as ESI Hot Paper, ESI Highly Cited Paper, IEEE CIS Chengdu Section Best Paper, AJCAI2024 Spotlight Paper, and MLMI2022 Best Paper. He is the funding chair of the IEEE CIS Task Force on Evolutionary Deep Learning and Applications. He is the leading chair of the special session on EDLA at IEEE CEC 2019, 2020, 2021, 2022, and 2024, and the symposium on ENASA at IEEE SSIC 2019-2023. He is an associate editor of IEEE TEVC, an associate editor of IEEE TNNLS, and an editorial member of Memetic Computing.