Segmented And Segmentation Free Approach for Handwritten Text Recognition
Keywords:
HTR (HandWritten Text Recognition), CNN (Convolutional Neural Network), RNN (Recurrent Neural Network), ANN (Artificial Neural Network)Abstract
Text has a long history that dates back thousands of years. In a wide range of vision-based application scenarios, the rich and accurate semantic information carried by text is crucial. As a result, computer vision and pattern recognition researchers have been working on text detection in natural settings.With the growth and development of deep learning in recent years, many techniques have demonstrated promise in terms of originality, viability, and efficiency.In this paper Authors discuss the approach on handwritten text recognition (HTR) with segmentation and without segmentation.For those working in the field of computer vision's text-based picture segmentation, this paper serves as a reference.There are various methods available for segmentation like Histogram , Projection methods. Segmentation is done on 3 levels as lines, word and character. There are also some methods available which do not need segmentation for HTR as well word spotting. These segmentation free methods use different neural network algorithms like CNN, RNN, ANN etc.
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References
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