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HomeAcademic staffDr Mehran Taghipour Gorjikolaie
Dr Mehran Taghipour Gorjikolaie

Dr Mehran Taghipour Gorjikolaie

e409837@lsbu.ac.uk

Electrical and Electronic Engineering

https://orcid.org/0000-0001-6132-8454

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https://orcid.org/0000-0001-6132-8454

I earned my PhD degree in Electronic Engineering with a focus on Machine Learning in early 2016. During my academic and research journey, I had the opportunity to engage in diverse projects and collaborations.

In 2015, I served as a visiting researcher, contributing to a biometric project at PRAlab in Cagliari, Italy. Subsequently, from September 2016 to August 2021, I held a position as a lecturer at the University of Birjand in Iran, where I shared my knowledge and expertise with students.

My postdoctoral journey led me to the Center for Vision, Speech, and Signal Processing (CVSSP) at the University of Surrey, where I worked from September 2021 to August 2023. During this time, I had the privilege of collaborating with esteemed institutions such as the University of Utrecht in the Netherlands, Concordia University in Canada, and the University of Strathclyde in the United Kingdom, starting in 2018 and continuing to the present day.

Currently, I am a postdoctoral research fellow at London South Bank University, where I am actively involved in the MammoScreen project, applying Artificial Intelligence and Machine Learning techniques. My primary area of expertise and interest lies in the application of these techniques within various domains of Electrical Engineering and the realm of medical projects involving humans and animals.

My specific fields of interest encompass the following:

Application of Artificial Intelligence and Computational Intelligence

Machine Learning

Optimization Algorithms

Biometrics

Medical Image Processing

you can check the following links:

https://scholar.google.com/citations?user=rgMu4GQAAAAJ&hl=en

http://www.mirlabs.net/global/index.php?c=main&a=person&id=1997

https://www.linkedin.com/in/mehrantaghipour/

http://pralab.diee.unica.it/en/AboutUs

Email address: mehran.taghipour-gorjikolaie@lsbu.ac.uk

Post doctoral Research Fellow
CVSSP, University of Surrey, UK.

• Developed 3D photography system by using Azure Kinect cameras.

• Used computer vision and AI method to examine the link between external facial/head appearance and abnormal brain morphology in pedigree dogs.

2021
2023
Education
Lecturer
University of Birjand, Iran.

• Taught Artificial Intelligence (AI), Machine Learning (ML) and Computer Vision (CV) related courses.

• Taught computer and electronics related courses.

• Researched in the field of application of AI, CV and ML techniques.

• Supervised/ advised MSc and PhD students.

2016
2021
Education
Director of R&D department,
Achilan Door Company, Iran.

• Improved performance of Automatic doors.

• Used AI techniques to develop new sensors, new systems and new structures.

• Used AI techniques to increase customer purchases.

2011
2016
Commercial/industry
People-Centred AI, University of Surrey, UK.
2021
Iranian Society of Machine Vision and Image Processing (ISMVIP), Iran.
2012

Filter publications

Prediction of Nonsinusoidal AC Loss of Superconducting Tapes Using Artificial Intelligence-Based Models
Yazdani-Asrami, M., Taghipour-Gorjikolaie, M., Song, W., Zhang, M. and Yuan, W. (2020). Prediction of Nonsinusoidal AC Loss of Superconducting Tapes Using Artificial Intelligence-Based Models. IEEE Access. 8, pp. 207287 - 207297. https://doi.org/10.1109/access.2020.3037685

Deep Region of Interest and Feature Extraction Models for Palmprint Verification Using Convolutional Neural Networks Transfer Learning
Izadpanahkakhk, M., Razavi, S., Taghipour-Gorjikolaie, M., Zahiri, S. and Uncini, A. (2018). Deep Region of Interest and Feature Extraction Models for Palmprint Verification Using Convolutional Neural Networks Transfer Learning. Applied Sciences. https://doi.org/10.3390/app8071210