Seemanta Ahmed Shubho

Work place: American International University-Bangladesh, Faculty of Science & Information Technology Dhaka, 1212, Bangladesh

E-mail: shubho.aiub@gmail.com

Website:

Research Interests: Computer systems and computational processes, Artificial Intelligence, Computer Vision, Computer Architecture and Organization, Virtual Reality, Image Processing

Biography

Seemanta Ahmed Shubho is a student of undergraduate (UG) program majoring in Computer Science & Engineering from American International University-Bangladesh. He is also working as an embedded software engineer for last two years. He has won Bracathon II in 2017 (hackathon organized by Brac). He was also a runner-up in the national hackathon 2016 organized by the Ministry of Information and Communication Technology. He has contributions in open source libraries. His research interest focuses but not limited to Image Processing, Computer Vision, Augmented Reality, Virtual Reality, Artificial Intelligence and Machine Learning.

Author Articles
Traffic Sign Detection based on Color Segmentation of Obscure Image Candidates: A Comprehensive Study

By Dip Nandi A. F. M. Saifuddin Saif Prottoy Paul Kazi Md. Zubair Seemanta Ahmed Shubho

DOI: https://doi.org/10.5815/ijmecs.2018.06.05, Pub. Date: 8 Jun. 2018

Automated Vehicular System has become a necessity in the current technological revolution. Real Traffic sign detection and recognition is a vital part of that system that will find roadside traffic signs to warn the automated system or driver beforehand of the physical conditions of roads. Mostly, researchers based on Traffic sign detection face problems such as locating the sign, classifying it and distinguishing one sign from another. The most common approach for locating and detecting traffic signs is the color information extraction method. The accuracy of color information extraction is dependent upon the selection of a proper color space and its capability to be robust enough to provide color analysis data. Techniques ranging from template matching to critical Machine Learning algorithms are used in the recognition process. The main purpose of this research is to give a review based on methods and framework of Traffic Sign Detection and Recognition solution and discuss also the current challenges of the whole solution.

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