Skip to main content Start main content

Multimodal Data-based Deep Learning Model for Human Behavior Recognition towards Smart Health-oriented Office-working

Seminar

  • Date

    27 Sep 2023

  • Organiser

    Department of Industrial and Systems Engineering, PolyU

  • Time

    10:00 - 12:30

  • Venue

    PQ304  

Speaker

Dr Tao Peng

20230927_Dr Tao Peng_Poster

Summary

Human factors is the key component of human-centric systems for both human well-being and overall system performance. With such a concern, strategic development plans have been proposed in different countries, such as Healthy China Initiative. The advancement of Internet-of-Things (IoT), intelligent data analytics, and service innovation contribute to the prevailing development of modern office work. A new paradigm named smart health-oriented office-working (SHOW) is defined to prevention and control measures of health issues associated with office work. It is capable of understanding the context and adapting to their demands. Human behavior recognition system is essential to incorporate intelligence into SHOW, however, several issues still exist, including ineffective use of multimodal data, and lack of a privacy-preserving and unobtrusive method. Prevailing studies have utilized cameras, wearables, smartphones, pressure sensors and infrared array sensors to recognize human behavior, by considering the pros and cons of these approaches, we have explored different multimodal data combinations. Moreover, a deep learning model-based recognition algorithm was developed with the adoption of a feature-level fusion strategy. Extensive experiments are conducted to examine and validate the performance of the proposed model using a self-collected dataset. We hope this study would bring an interdisciplinary and collaborative perspective for smart health-oriented office-working and encourage more research in this emerging and promising field.

Keynote Speaker

Dr Tao Peng

Dr Tao Peng

Associate Professor and Associate Head,
Department of Industrial and Systems Engineering, 
Deputy Director of the Institute of Industrial Engineering, 
School of Mechanical Engineering, Zhejiang University

Dr Tao Peng, is currently an Associate Professor, and serves as the Associate Head of the Department of Industrial and Systems Engineering, Deputy Director of the Institute of Industrial Engineering, School of Mechanical Engineering, Zhejiang University. He is a member of CMES, CGS, IEEE, ASME, and the State Key Laboratory of Fluid Power Components and Mechatronic Systems, Zhejiang University, China. He received his bachelor and master degrees from Xi’an Jiaotong University, China, and doctoral degree from the University of Auckland, New Zealand. His research interest focuses on sustainable design, manufacturing, supply chain and services, incorporating innovative smart technologies, big data analytics, and cognitive intelligence. He has been listed one of the World’s Top 2% Scientists by Stanford University, and his work has been funded by NSFC, MIIT, DSTZJ, and several industrial partners, with outcomes of 90+ SCI/EI-indexed publications and 12 Chinese patents. He serves as an Associate Editor of IET Collaborative Intelligent Manufacturing, Editorial Board Member of Sensors and Green Manufacturing Open, Guest Editor of Journal of Manufacturing Systems, Additive Manufacturing, Journal of Cleaner Production, Journal of Engineering Design, Journal of Mechanical Engineering (in Chinese), China Mechanical Engineering (in Chinese), etc.

Your browser is not the latest version. If you continue to browse our website, Some pages may not function properly.

You are recommended to upgrade to a newer version or switch to a different browser. A list of the web browsers that we support can be found here