Md. Tarek Habib

Work place: Department of CSE, Daffodil International University, Dhaka, Bangladesh

E-mail: md.tarekhabib@yahoo.com

Website:

Research Interests: Computer systems and computational processes, Artificial Intelligence, Computer Vision, Natural Language Processing, Neural Networks

Biography

Md. Tarek Habib is pursuing his Ph.D. degree at the Department of Computer Science and Engineering in Jahangirnagar University. He obtained his B.Sc. degree in Computer Science from BRAC University in 2006. Then he got M.S. degree in Computer Science and Engineering (Major in Intelligent Systems Engineering) from North South University in 2009. He is an Assistant Professor at the Department of Computer Science and Engineering in Daffodil International University. His research interest is in Artificial Intelligence, especially Artificial Neural Networks, Machine Learning, Computer Vision and Natural Language Processing.

Author Articles
An Exploratory Approach to Find a Novel Metric Based Optimum Language Model for Automatic Bangla Word Prediction

By Md. Tarek Habib Abdullah Al-Mamun Md. Sadekur Rahman Shah Md. Tanvir Siddiquee Farruk Ahmed

DOI: https://doi.org/10.5815/ijisa.2018.02.05, Pub. Date: 8 Feb. 2018

Word completion and word prediction are two important phenomena in typing that have intense effect on aiding disable people and students while using keyboard or other similar devices. Such auto completion technique also helps students significantly during learning process through constructing proper keywords during web searching. A lot of works are conducted for English language, but for Bangla, it is still very inadequate as well as the metrics used for performance computation is not rigorous yet. Bangla is one of the mostly spoken languages (3.05% of world population) and ranked as seventh among all the languages in the world. In this paper, word prediction on Bangla sentence by using stochastic, i.e. N-gram based language models are proposed for auto completing a sentence by predicting a set of words rather than a single word, which was done in previous work. A novel approach is proposed in order to find the optimum language model based on performance metric. In addition, for finding out better performance, a large Bangla corpus of different word types is used.

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An Empirical Method for Optimization of Counterpropagation Neural Network Classifier Design for Fabric Defect Inspection

By Md. Tarek Habib M. Rokonuzzaman

DOI: https://doi.org/10.5815/ijisa.2014.09.04, Pub. Date: 8 Aug. 2014

Automated, i.e. machine vision based fabric defect inspection systems have been drawing plenty of attention of the researchers in order to replace manual inspection. Two difficult problems are mainly posed by automated fabric defect inspection systems. They are defect detection and defect classification. Counterpropagation neural network (CPN) is a robust classifier and very promising for defect classification. In general, works reported to date have claimed varying level of successes in detection and classification of different types of defects through CPN; but in particular, no claimed has been made for successful application of CPN for fabric defects detection and classification. In those published works, no investigation has been reported regarding to the variation of major performance parameters of NN based classifiers such as learning time and classification accuracy based on network topology and training parameters. As a result, application engineer has little or no guidance to take design decisions for reaching to optimum structure of NN based defect classifiers in general and CPN based in particular. Our work focuses on empirical investigation of interrelationship between design parameters and performance of CPN based classifier for fabric defect classification. It is believed that such work will be laying the ground to empower application engineers to decide about optimum values of design parameters for realizing most appropriate CPN based classifier.

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