Abstract
Hand written text acknowledgment field has been considered as one of the hardest issues in the digital word. The multifaceted nature dimension of this exploration zone is high due to the reasons like diverse method for writing pursued by the clients, auxiliary independences, age elements of people and so on. This paper shows a novel procedure for the recognition of handwritten scripts, for example division of words and characters. In this paper, we have used two different scripts:“Devanagari” and “Roman” scripts. For which three Convolution Neural Networks(CNN) models are applied on different types of classification: one for language classification for which we have achieved 98% accuracy, second one for Devanagari character classification for which we have achieved 89% and third one for Roman character classification for which have achieved 97% respectively.
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Nirwan, P., & Singh, G. (2019). Segmentation and identification of bilingual offline handwritten scripts (devanagari and roman). International Journal of Recent Technology and Engineering, 8(2 Special Issue 6), 603–607. https://doi.org/10.35940/ijrte.B1178.0782S619
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