

A Survey on the Use of Neural Networks and gTTS Tools to Convert Handwritten Text to Text and Speech
Abstract
Penmanship acknowledgment is the capacity of a machine to get and decipher transcribed input from different sources like paper records, photos, contact screen gadgets and so on. Acknowledgment of transcribed and machine characters is an arising area of exploration and tracks down broad applications in banks, workplaces and enterprises. The fundamental point of this task is to plan master framework for changing over the written by hand content to computerized text and discourse utilizing brain organizations and gTTS instrument. The method of converting handwritten scanned paper or character image into digital text using a neural network is known as handwritten to digital text conversion. The changed over computerized text is changed over into the type of discourse utilizing gTTS instruments which can be put away as mp3 documents.
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