Deciphering Handwritten Text: A Convolutional Neural Network Framework for Handwritten Character Recognition
HCR (Handwritten Character Recognition) is considered one of the most challenging research areas, given the vast array of potential applications. Char
Authors
Md Jakir Hossain, Sarah Samiha Zaman, Fardin Rahman Akash, Farhana Alam, Ahmed Wasif Reza, Mohammad Shamsul Arefin
Publication date
2023/4/27
Book
International Conference on Intelligent Computing & Optimization
Pages
189-198
Publisher
Springer Nature Switzerland
Description
HCR (Handwritten Character Recognition) is considered one of the most challenging research areas, given the vast array of potential applications. Character recognition has been the focus of research since the beginning of Artificial Intelligence. Numerous studies, including HCR, have been conducted in this sector. A typical procedure requires two steps: feature extraction and Classification. Many forms of neural networks have been used in this cause over the years, with notable results. CNN has altered the scenario in recent years. It has had remarkable success in this industry due to its cutting-edge extraction of features and Classification. To produce recognized characters, CNN uses images for input and sends them through a sequence of layers, including a convolutional layer, a nonlinear function, a pooling layer, and interconnected layers. We utilized a dataset containing 372,450 handwritten character …
Scholar articles
MJ Hossain, SS Zaman, FR Akash, F Alam, AW Reza… - International Conference on Intelligent Computing & …, 2023
LINK https://link.springer.com/chapter/10.1007/978-3-031-36246-0_18
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