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Performance Analysis of State of the Art Convolutional Neural Network Architectures in Bangla Handwritten Character Recognition

Author Affiliations
Bangladesh University of Professionals, Bangladesh University of Engineering and Technology, Jahangirnagar University
Published InPattern Recognition and Image Analysis
Year2021
Citations47

Abstract

Bangla handwritten character recognition is a popular research topic as its difficulty is higher than the recognition of other languages because of multiple formats of compound characters. State of the art Convolutional neural network (CNN) architectures are very much useful in computer vision applications. Some works have been carried out in Bangla handwritten character recognition but most of them either not very efficient or they can not classify a lot of characters. In this work, state of art pre-trained CNN architectures is used to classify 231 different Bangla handwritten characters using CMATERdb dataset. The images were first converted to B&W form with white as the foreground color. The size of the images is reduced to 28 × 28 form. These…
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