51³Ô¹Ïapp

Dr Bangli Liu

Job: Senior Lecturer

School/department: School of Computer Science and Informatics

Address: De 51³Ô¹Ïapp University, The Gateway, Leicester, LE1 9BH

T: Ext 6064

E: bangli.liu@dmu.ac.uk

 

Personal profile

Dr. Liu Bangli earned her Ph.D. in Computer Science from the University of Portsmouth, UK, in 2018. She is currently a lecturer at De 51³Ô¹Ïapp University in Leicester, UK, after previously holding a lecturing position at the University of Portsmouth. Dr. Liu's academic experience includes a research visit to Tokyo Metropolitan University in Japan in 2018 and postdoctoral positions at both the University of Portsmouth and Loughborough University.

Dr. Liu's research primarily focuses on artificial intelligence, human-robot interaction, human behavior analysis and applications, computer vision, and related fields. She is currently leading several research projects funded by the Royal Society, 51³Ô¹Ïapp, and other sources. Her work has been published in top-tier international academic journals, including Pattern Recognition, Neurocomputing, and IEEE Transactions on Industrial Informatics, among others. She was also invited to contribute a review chapter on computer vision-based human behavior analysis to the IEEE Press Handbook Human Machine System and has organized and chaired computer vision workshops at various international conferences, including IEEE SMC.

Research group affiliations

Institute of Artificial Intelligence (IAI)

Publications and outputs

Book Chapter

1. Liu, B., and Liu, H. (2022). Chapter 26: RGB-D based Human Action Recognition: from Handcrafted to Deep Learning, IEEE Press Handbook Human Machine System. (Accepted for publish).

Refereed Journals

1. Liu, B., Cai, H., Ju, Z., & Liu, H. (2020). Multi-stage adaptive regression for online activity recognition. Pattern Recognition (Impact factor: 8.518), 98, 107053.
2. Liu, B., & Ait-Boudaoud, D. (2020). Effective image super resolution via hierarchical convolutional neural network. Neurocomputing (Impact factor: 5.779), 374, 109-116.
3. Liu, B., Cai, H., Ju, Z., and Liu, H. (2019). RGB-D Sensing based Human Action and Interaction Analysis: A Survey, Pattern Recognition (Impact factor: 8.518), 94, 1-12.
4. Liu, B., Ju, Z., and Liu, H. (2018). A structured multi-feature representation for recognizing human action and interaction. Neurocomputing (Impact factor: 5.779), 318, 287-296.
5. Cai, H., Jiang, L., Liu, B., Deng, Y., and Meng, Q. (2019). Assembling convolution neural networks for automatic viewing transformation, IEEE Transactions on Industrial Informatics (Impact factor: 11.648), 16.1 (2019): 587-594.
6. Cai, H., Liu, B., Zhang, J., Chen, S., and Liu, H. (2017). Visual focus of attention estimation using eye center localization. IEEE Systems Journal (Impact factor: 3.391), 11(3), 1320- 1325.
7. Yang, L., Wang, Z., Gao, S., Shi, M., & Liu, B. (2019). Magnetic flux leakage image classification method for pipeline weld based on optimized convolution kernel. Neurocomputing (Impact factor: 5.719), 365, 229-238.

Refereed Conference Papers

1. Liu, B., Ju, Z., Kubota, N., and Liu, H. (2018). Online Action Recognition based on Skeleton Motion Distribution. British Machine Vision Conference Workshop (BMVCW).
2. Liu, B., Cai, H., Ji, X., Liu, H. (2017). Human-human interaction recognition based on spatial and motion trend feature. Int. Conf. Image Processing (ICIP), pp. 4547-4551.
3. Liu, B., Yu, H., Zhou, X., Liu, H. (2016). Combining 3D joints Moving Trend and Geometry property for human action recognition. IEEE Int. Conf. Systems, Man, and Cybernetics (SMC). pp. 000332-000337.
4. Cai, H., Liu, B., Ju, Z., Thill, S., Belpaeme, T., Vanderborght, B., Liu, H. (2018) Accurate Eye Center Localization via Hierarchical Adaptive Convolution. British Machine Vision Conference (BMVC), 2018, 284.

Research interests/expertise

  • Artificial Intelligence
  • Human Behavior Analysis and applications
  • Human-robot Interaction
  • Computer Vision
  • Deep Learning

Areas of teaching

  • Big Data
  • Machine Learning
  • Data Science

Courses taught

CTEC2921 Big Data and Machine Learning (Bsc, FHEQ level 5, Module Leader) IMAT5322 Big Data Analytics (Msc, FHEQ level 7, Module Leader) IMAT5167 Data Warehouse Design and OLAP (Msc, FHEQ level 7) IMAT5103 Database System and Design (Msc, FHEQ level 7). CTEC3303 Systems Building: Methods (BSc, FHEQ level 6). 

Honours and awards

  • IEEE Student Travel Grant Award in IAPR in HongKong, China, 2017
  • IEEE SMC Student Travel Grant in Budapest, Hungary, 2016

Membership of professional associations and societies

IEEE Member

Projects

[Principle Investigator]

“Development Of Advanced Elderly Care Robot In Home Environments”, (PI), Research Grant, £19,040, Funded by The Royal Society, 12/2022-11/2023.

“Development of Intelligent Robotic intervention platform for Children with Autism”, (PI), £7,000, funded by 51³Ô¹Ïapp HIEF funding, 12/2022-07/2023.

Externally funded research grants information

“Development Of Advanced Elderly Care Robot In Home Environments”, (Principle Investigator), Research Grant, £19,040, Funded by The Royal Society, 12/2022-11/2023.

ORCID number

0000-0002-2543-8987