• Corpus ID: 7287169

Cursive Handwriting Recognition System Using Feature Extraction and Artificial Neural Network

  title={Cursive Handwriting Recognition System Using Feature Extraction and Artificial Neural Network},
  author={Utkarsh Dwivedi and Pranjal Singh Rajput and Manish Kumar Sharma},
Cursive Handwriting recognition is a very challenging area due to the unique styles of writing from one person to another. Various researches have been conducted in this field since around four decades. In this paper, an offline cursive writing character recognition system is described using an Artificial Neural Network. The features of each character written in the input are extracted and then passed to the neural network. Data sets, containing texts written by different people are used to… 

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