Associate Professor Yi Guo

Associate Professor Yi Guo

Associate Dean - International (China, Hong Kong, Macau),
Data Science

Associate Dean, Research,
Dean's Unit, Computer, Data & Math Sciences

Associate Professor in Data Science,
Data Science

Biography

Yi Guo received the B. Eng. (Hons.) in instrumenta- tion from the North China University of Technology in 1998, and the M. Eng. in automatic control from Central South University in 2002. From 2005, he studied Computer Science at the University of New England, Armidale, Australia, focusing on di- mensionality reduction for structured data with no vectorial representation. He received a Ph.D. degree in 2008. Between 2008 and 2016, he was with CSIRO, working as a computational statistician on various projects in spectroscopy, remote sensing and materials science. He recently joined Center for Research in Mathematics at the School of Computing, Engineering and Mathematics, Western Sydney University. 

This information has been contributed by Associate Professor Guo.

Qualifications

  • PhD University of New England

Professional Memberships

  • IEEE member (2016 - 2017)

Organisational Unit (School / Division)

  • Data Science
  • Dean's Unit, Computer, Data & Math Sciences
  • Data Science

Contact

Email: Y.Guo@westernsydney.edu.au
Phone: (02) 9685 9374
Mobile:
Location: EN.1.35
Parramatta

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Teaching

Previous Teaching Areas

  • 301046 Big Data, 2021
  • 301110 Applications of Big Data, 2021

Publications

Journal Articles

  • Jayasuriya, N., Guo, Y., Hu, W. and Ghannoum, O. (2024), 'Machine vision based plant height estimation for protected crop facilities', Computers and Electronics in Agriculture, vol 218 .
  • Ke, J., Shen, Y., Lu, Y., Guo, Y. and Shen, D. (2023), 'Mine local homogeneous representation by interaction information clustering with unsupervised learning in histopathology images', Computer Methods and Programs in Biomedicine, vol 235 .
  • Guo, Y., Li, F. and Wang, Z. (2023), 'Cloud removal using scattering model and evaluation via semi-realistic simulation', International Journal of Remote Sensing, vol 44, no 9 , pp 2799 - 2825.
  • Baker, E., Li, W., Hodges, R., Masso, S., Jones, C., Guo, Y., Alt, M., Antoniou, M., Afshar, S., Tosi, K. and Munro, N. (2023), 'Harnessing automatic speech recognition to realise sustainable development goals 3, 9, and 17 through interdisciplinary partnerships for children with communication disability', International Journal of Speech-Language Pathology, vol 25, no 1 , pp 125 - 129.
  • Ke, J., Lu, Y., Shen, Y., Zhu, J., Zhou, Y., Huang, J., Yao, J., Liang, X., Guo, Y., Wei, Z., Liu, S., Huang, Q., Jiang, F. and Shen, D. (2023), 'ClusterSeg : a crowd cluster pinpointed nucleus segmentation framework with cross-modality datasets', Medical Image Analysis, vol 85 .
  • Yang, X., Liang, L., Li, F., Tian, Q., Lu, X., Xin, L., Guo, Y. and Dong, W. (2022), 'Hyper-temporal data based modulation transfer functions compensation for geostationary remote sensing satellites', IEEE Transactions on Geoscience and Remote Sensing, vol 60 .
  • Guo, Y., Tierney, S. and Gao, J. (2021), 'Robust functional manifold clustering', IEEE Transactions on Neural Networks and Learning Systems, vol 32, no 2 , pp 777 - 787.
  • Guo, Y., Tierney, S. and Gao, J. (2021), 'Efficient sparse subspace clustering by nearest neighbour filtering', Signal Processing, vol 185 .
  • Yin, M., Gao, J., Xie, S. and Guo, Y. (2019), 'Multiview subspace clustering via tensorial t-product representation', IEEE Transactions on Neural Networks and Learning Systems, vol 30, no 3 , pp 852 - 864.
  • Liu, Y., Guo, Y., Li, F., Xin, L. and Huang, P. (2019), 'Sparse dictionary learning for blind hyperspectral unmixing', IEEE Geoscience and Remote Sensing Letters, vol 16, no 4 , pp 578 - 582.
  • Yang, J., Guo, Y., Yang, Z. and Xie, S. (2019), 'Under-determined convolutive blind source separation combining density-based clustering and sparse reconstruction in time-frequency domain', IEEE Transactions on Circuits and Systems I: Regular Papers, vol 66, no 8 , pp 3015 - 3027.
  • Yang, J., Guo, Y., Yang, Z., Yang, L. and Xie, S. (2019), 'Estimating number of speakers via density-based clustering and classification decision', IEEE Access, vol 7 , pp 176541 - 176551.
  • Traylen, A., Caccetta, P., Guo, Y., Berman, M. and Lau, I. (2018), 'Endmember search and proportion estimates from airborne hyperspectral surveys', International Journal of Remote Sensing, vol 39, no 2 , pp 525 - 543.
  • Li, F., Xin, L., Guo, Y., Gao, D., Kong, X. and Jia, X. (2018), 'Super-resolution for GaoFen-4 remote sensing images', IEEE Geoscience and Remote Sensing Letters, vol 15, no 1 , pp 28 - 32.
  • Berman, M., Hao, Z., Stone, G. and Guo, Y. (2018), 'An investigation into the impact of band error variance estimation on intrinsic dimension estimation in hyperspectral images', IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol 11, no 9 , pp 3279 - 3296.
  • Li, F., Xin, L., Guo, Y., Gao, J. and Jia, X. (2017), 'A framework of mixed sparse representations for remote sensing images', IEEE Transactions on Geoscience and Remote Sensing, vol 55, no 2 , pp 1210 - 1221.
  • Guo, Y., Li, F., Caccetta, P. and Devereux, D. (2017), 'Multiple temporal mosaicing for Landsat satellite images', Journal of Applied Remote Sensing, vol 11, no 1 .
  • Berman, M., Bischof, L., Lagerstrom, R., Guo, Y., Huntington, J., Mason, P. and Green, A. (2017), 'A comparison between three sparse unmixing algorithms using a large library of shortwave infrared mineral spectra', IEEE Transactions on Geoscience and Remote Sensing, vol 55, no 6 , pp 3588 - 3610.
  • Zhai, Y., Zhang, L., Wang, N., Guo, Y., Cen, Y., Wu, T. and Tong, Q. (2016), 'A modified locality-preserving projection approach for hyperspectral image classification', IEEE Geoscience and Remote Sensing Letters, vol 13, no 8 , pp 1059 - 1063.
  • Hao, Z., Berman, M., Guo, Y., Stone, G. and Johnstone, I. (2016), 'Semi-realistic simulations of natural hyperspectral scenes', IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol 9, no 9 , pp 4407 - 4419.
  • Guo, Y., Gao, J. and Li, F. (2015), 'Random spatial subspace clustering', Knowledge-Based Systems, vol 74 , pp 106 - 118.
  • Sun, X., Zhang, L., Yang, H., Wu, T., Cen, Y. and Guo, Y. (2015), 'Enhancement of spectral resolution for remotely sensed multispectral image', IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol 8, no 5 , pp 2198 - 2211.
  • O'Brien, A., Saunders, N., Guo, Y., Buske, F., Scott, R. and Bauer, D. (2015), 'VariantSpark : population scale clustering of genotype information', BMC Genomics, vol 16, no 1 .
  • Clifford, D. and Guo, Y. (2015), 'Combining two soil property rasters using an adaptive gating approach', Soil Research, vol 53, no 8 , pp 907 - 912.
  • Yin, M., Gao, J., Lin, Z., Shi, Q. and Guo, Y. (2015), 'Dual graph regularized latent low-rank representation for subspace clustering', IEEE Transactions on Image Processing, vol 24, no 12 , pp 4918 - 4933.
  • Guo, Y., Berman, M. and Gao, J. (2014), 'Group subset selection for linear regression', Computational Statistics & Data Analysis, vol 75 , pp 39 - 52.
  • Li, F., Li, C., Tang, L. and Guo, Y. (2014), 'Elastic registration for airborne multispectral line scanners', Journal of Applied Remote Sensing, vol 8, no 1 .
  • Guo, Y., Gao, J. and Li, F. (2014), 'Spatial subspace clustering for drill hole spectral data', Journal of Applied Remote Sensing, vol 8, no 1 .
  • Guo, Y. and Berman, M. (2012), 'A comparison between subset selection and L1 regularisation with an application in spectroscopy', Chemometrics and Intelligent Laboratory Systems, vol 118 , pp 127 - 138.
  • Kwan, P., Gao, J., Guo, Y. and Kameyama, K. (2010), 'A learning framework for adaptive fingerprint identification using relevance feedback', International Journal of Pattern Recognition and Artificial Intelligence, vol 24, no 1 , pp 15 - 38.
  • Gao, J., Kwan, P. and Guo, Y. (2009), 'Robust multivariate L1 principal component analysis and dimensionality reduction', Neurocomputing, vol 72, no 4-6 , pp 1242 - 1249.
  • Guo, Y., Gao, J. and Kwan, P. (2008), 'Twin kernel embedding', IEEE Transactions on Pattern Analysis and Machine Intelligence, vol 30, no 8 , pp 1490 - 1495.
  • Guo, Y., Gao, J., Kwan, P. and Hou, K. (2008), 'Visualization of protein structure relationships using constrained twin kernel embedding', Journal of Biomedical Science and Engineering, vol 1, no 2 , pp 133 - 140.
  • Guo, Y., Guo, Y., Zhou, W. and Lee, P. (2002), 'H-inf control for a class of structured time-delay systems', Systems & Control Letters, vol 45 , pp 35 - 47.

Conference Papers

  • Hu, X., Xu, C., Ma, J., Huang, Z., Yang, J., Guo, Y. and Barthelemy, J. (2023), '[MASK] insertion for anti-adversarial attacks', European Chapter of the Association for Computational Linguistics. Conference, Dubrovnik, Croatia.
  • Liu, J., Mei, S., Hu, X., Yao, X., Yang, J. and Guo, Y. (2022), 'Seeing the wood for the trees : a contrastive regularization method for the low-resource Knowledge Base Question Answering', Association for Computational Linguistics, Online.
  • Deng, J., Shen, Y., Guo, Y. and Ke, J. (2022), 'CellSegNet : an adaptive multi-resolution hybrid network for cell segmentation', SPIE Conference on Progress in Biomedical Optics and Imaging , San Diego, Calif..
  • Ke, J., Shen, Y., Jiang, X., Guo, Y., Chen, Y. and Liang, X. (2021), 'Multiple-datasets and multiple-label based color normalization in histopathology with cGAN', Medical Imaging (Conference : SPIE), Online.
  • Yang, L., Yang, J. and Guo, Y. (2021), 'Under-determined blind speech separation via the convolutive transfer function and lp Regularization', International Conference on Mobility, Sensing and Networking, Exeter, U.K..
  • Park, L., Guo, Y. and Read, J. (2020), 'Assessing the multi-labelness of multi-label data', European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, Wurzburg, Germany.
  • Ke, J., Shen, Y., Guo, Y., Wright, J. and Liang, X. (2020), 'A prediction model of microsatellite status from histology images', International Conference on Biomedical Engineering and Technology, Tokyo, Japan.
  • Ke, J., Shen, Y., Guo, Y., Wright, J., Jing, N. and Liang, X. (2020), 'A high-throughput tumor location system with deep learning for colorectal cancer histopathology image', International Conference on Artificial Intelligence in Medicine, Minneapolis, Minn..
  • Ke, J., Shen, Y., Guo, Y. and Liang, X. (2020), 'Fast tumor detector in whole-slide image with dynamic programing based Monte Carlo sampling', International Conference on Image Processing, online.
  • Mazumdar, K., Zhang, D. and Guo, Y. (2019), 'Portfolio risk optimisation and diversification using swarm intelligence', Pacific Rim International Conference on Artificial Intelligence, Yanuca Island, Fiji.
  • Mazumdar, K., Zhang, D. and Guo, Y. (2019), 'Mulit-peak algorithmic trading strategies using Grey Wolf Optimizer', Pacific Rim International Conference on Artificial Intelligence, Yanuca Island, Fiji.
  • Yang, J., Guo, Y., Guo, Y., Yang, Z. and Yang, C. (2019), 'A sparsity-relaxed algorithm for the under-determined convolutive blind source separation', International Conference on Image and Video Processing, and Artificial Intelligence, Shanghai, China.
  • Liu, Y., Guo, Y., Li, F., Xin, L. and Huang, P. (2018), 'A fast algorithm to find all paths for hyperspectral unmixing', International Geoscience and Remote Sensing Symposium, Valencia, Spain.
  • Li, F., Xin, L., Guo, Y. and Jia, X. (2018), 'Multitemporal mid-infrared imagery based calibration and super resolution for Gaofen-4', International Geoscience and Remote Sensing Symposium, Valencia, Spain.
  • Guo, Y., Green, S., Park, L. and Rispen, L. (2018), 'Left ventricle volume measuring using echocardiography sequences', DICTA (Conference), Canberra, A.C.T..
  • Yang, J., Yang, Z., Guo, Y. and Xie, S. (2017), 'Blind source separation : detecting unknown sources number in covariance domain', International Conference on Computer and Automation Engineering, Sydney, N.S.W..
  • Ke, J., Guo, Y. and Sowmya, A. (2017), 'A fast approximate spectral unmixing algorithm based on segmentation', IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Honolulu, Hawaii.
  • Gao, J., Guo, Y. and Wang, Z. (2017), 'Matrix neural networks', International Symposium on Neural Networks, Sapporo, Japan.
  • Li, F., Xin, L., Liu, Y., Fu, J., Liu, Y. and Guo, Y. (2017), 'High efficient optical remote sensing images acquisition for nano-satellite-framework', Sensors, Systems, and Next-Generation Satellites (Conference), Warsaw, Poland.
  • Ke, J., Guo, Y., Sowmya, A. and Bednarz, T. (2017), 'A performance acceleration algorithm of spectral unmixing via subset selection', European Symposium on Artificial Neural Networks, Bruges, Belgian.
  • Guo, Y., Li, F., Caccetta, P., Devereux, D. and Berman, M. (2016), 'Cloud filtering for Landsat TM satellite images using multiple temporal mosaicing', International Geoscience and Remote Sensing Symposium, Beijing, China.
  • Yin, M., Guo, Y., Gao, J., He, Z. and Xie, S. (2016), 'Kernel sparse subspace clustering on symmetric positive definite manifolds', IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Las Vegas, Nev..
  • Ke, J., Sowmya, A., Guo, Y., Bednarz, T. and Buckley, M. (2016), 'Efficient GPU computing framework of cloud filtering in remotely sensed image processing', DICTA (Conference), Gold Coast, Qld..
  • Li, F., Cornwell, T., De Hoog, F., Xin, L. and Guo, Y. (2016), 'Compressive sensing based multi-frequency synthesis', International Conference on Digital Signal Processing , Beijing, China.
  • Hao, Z., Berman, M., Guo, Y., Stone, G. and Johnstone, I. (2015), 'Semi-realistic simulations of natural hyperspectral scenes', IEEE International Geoscience and Remote Sensing Symposium, Milan, Italy.
  • Tierney, S., Guo, Y. and Gao, J. (2015), 'Selective multi-source total variation image restoration', DICTA (Conference), Adelaide, S.A..
  • Guo, Y., Gao, J., Li, F., Tierney, S. and Yin, M. (2015), 'Low rank sequential subspace clustering', International Joint Conference on Neural Networks, Killarney, Ireland.
  • Tierney, S., Gao, J. and Guo, Y. (2014), 'Affinity pansharpening and image fusion', DICTA (Conference), Wollongong, N.S.W..
  • Tan, X., Sun, C., Wang, D., Guo, Y. and Pham, T. (2014), 'Soft cost aggregation with multi-resolution fusion', European Conference on Computer Vision, Zurich, Switzerland.
  • Tierney, S., Gao, J. and Guo, Y. (2014), 'The W-penalty and its application to alpha matting with sparse labels', DICTA (Conference), Wollongong, N.S.W..
  • Tierney, S., Gao, J. and Guo, Y. (2014), 'Subspace clustering for sequential data', IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Columbus, Ohio.
  • Sun, Y., Gao, J., Hong, X., Guo, Y. and Harris, C. (2014), 'Dimensionality reduction assisted tensor clustering', International Joint Conference on Neural Networks, Beijing, China.
  • Yin, M., Guo, Y. and Gao, J. (2014), 'Linear Subspace Learning via sparse dimension reduction', International Joint Conference on Neural Networks, Beijing, China.
  • Guo, Y., Gao, J. and Li, F. (2013), 'Spatial subspace clustering for hyperspectral data segmentation', International Conference on Digital Information Processing and Communications, Dubai, United Arab Emirates.
  • Hong, X., Guo, Y., Chen, S. and Gao, J. (2013), 'Sparse model construction using coordinate descent optimization', International Conference on Digital Signal Processing, Santorini, Greece.
  • Guo, Y., Gao, J. and Li, F. (2013), 'Large scale hyperspectral data segmentation by random spatial subspace clustering', International Geoscience and Remote Sensing Symposium, Melbourne, Vic..
  • Gao, J., Guo, Y. and Yin, M. (2013), 'Restricted Boltzmann machine approach to couple dictionary training for image super-resolution', International Conference on Image Processing , Melbourne, Vic..
  • Guo, Y., Gao, J. and Sun, Y. (2013), 'Endmember extraction by exemplar finder', ADMA (Conference), Hangzhou, China.
  • Guo, Y., Gao, J. and Li, F. (2013), 'Dimensionality reduction with dimension selection', Pacific-Asia Conference on Knowledge Discovery and Data Mining, Gold Coast, Qld..
  • Li, F., Tang, L., Li, C., Guo, Y. and Gao, J. (2013), 'A new super resolution method based on combined sparse representations for remote sensing imagery', Image and Signal Processing for Remote Sensing, Dresden, Germany.
  • Guo, Y., Gao, J. and Hong, X. (2012), 'Constrained grouped sparsity', Australasian Joint Conference on Artificial Intelligence, Sydney, N.S.W..
  • Li, F., Li, C., Tang, L. and Guo, Y. (2012), 'Elastic band-to-band registration for airborne multispectral scanners with large field of view', Image and Signal Processing for Remote Sensing, Edinburgh, U.K..
  • Guo, Y. and Gao, J. (2011), 'Local feature based tensor kernel for image manifold learning', Pacific-Asia Conference on Knowledge Discovery and Data Mining, Shenzhen, China.
  • Guo, Y., Gao, J. and Kwan, P. (2009), 'Regularized Kernel Local Linear Embedding on dimensionality reduction for non-vectorial data', Australasian Joint Conference on Artificial Intelligence, Melbourne, Vic..

Other Publications

  • 2011, 'An Unmixing Algorithm Based on a Large Library of Shortwave Infrared Spectra', Report

Dr. Yi Guo's research interests are in machine learning, computational statistics and applied mathematics such as optimisation, all with strong application focus in the areas such as environment monitoring, material science, medical science and so on.

 The models he worked on include

  • Dimensionality reduction
  • Manifold learning
  • Robust models
  • Blind source separation
  • Subspace clustering

 These methodologies have been applied to many problems in computer vision, image processing, pattern recognition and so on.

 His recent research focuses on data science including 

  • spatial temporal models (for multiway correlated data) 
  • complex neural networks 
  • neural processing

This information has been contributed by Associate Professor Guo.

Current Projects

Title: Co-funded post-doctoral position with WentWest Primary Health Network
Funder:
  • WentWest Limited
  • University of Western Sydney
Western Researchers: Andrew Page, Paul Hurley and Yi Guo
Years: 2022-09-01 - 2025-09-01
ID: P00028241
Title: AI designed camouflage system [Via UoW]
Funder:
  • Defence Innovation Network
Western Researchers: Yi Guo
Years: 2023-10-01 - 2024-09-30
ID: P00028923

Previous Projects

Title: Classification of Sonar Snapshot Images for Autonomous Underwater Vehicle On-board Processing [via UoW]
Funder:
  • Defence Innovation Network
Western Researchers: Yi Guo and Andre Van Schaik
Years: 2018-05-11 - 2019-01-31
ID: P00025130

Media

Title: Personal website
Description: My personal website

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