JOURNAL ARTICLE

Bi-Lingual Handwritten Character And Numeral Recognition Using Multi-Dimensional Recurrent Neural Networks (Mdrnn)

Kandarpa Kumar Sarma

Year: 2009 Journal:   Zenodo (CERN European Organization for Nuclear Research)   Publisher: European Organization for Nuclear Research

Abstract

The key to the continued success of ANN depends, considerably, on the use of hybrid structures implemented on cooperative frame-works. Hybrid architectures provide the ability to the ANN to validate heterogeneous learning paradigms. This work describes the implementation of a set of Distributed and Hybrid ANN models for Character Recognition applied to Anglo-Assamese scripts. The objective is to describe the effectiveness of Hybrid ANN setups as innovative means of neural learning for an application like multilingual handwritten character and numeral recognition.

Keywords:
Numeral system Character (mathematics) Recurrent neural network Artificial neural network Key (lock) Set (abstract data type) Character recognition Intelligent character recognition

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