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Welcome Dr. Fazly Abas

The CIA Lab is proud to add the newest member to our lab, Dr. Fazly Salleh Abas.

Dr. Fazly Salleh Abas received his B.Eng degree in Electronic and Electrical Engineering from Strathclyde University, Scotland in 1999 and Ph.D in Electronics and Computer Science from University of Southampton, England in 2004 where he worked on a project involving content-based analysis and retrieval of craquelure (crack) patterns. He has been a faculty member at the Faculty of Engineering and Technology, Multimedia University, Malaysia since 1999 and is currently a visiting scholar at the Department of Biomedical Informatics, Ohio State University. His current research interests are in image/video processing, pattern recognition, biomedical informatics, motion analysis for sports and rehabilitation applications as well as having certain degree of involvement in biometrics research.

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  1. We developed our solutions based on understanding of the imaging clinical trial process & unfulfilled needs of the trial sponsor & various participants in the trials

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