Recognition of Handwritten Character using Artificial Intelligence
Abstract
There are many things
that humans have in common, yet there are other things that are very unique to
every individual and one of them is handwriting. Handwriting is a skill that is
personal to individuals. It has continued as a means of communication and
recording information in day-to-day life. Because each person's handwriting is
unique, it is sometimes hard to interpret the information they try to convey.
As computerization is becoming more prominent these days, Handwriting
Recognition is gaining importance in various fields. The major focus is to
understand the handwriting and convert it into readable text. Deep learning, an
ability of Artificial Intelligence (AI), is used for the system to learn the
input automatically and convert the handwritten text to printed text.
Country : India
1 Naresh Katkuri
Associate Professor, Department of Computer Science and Engineering, Malla Reddy College of Engineering for Women, Hyderabad -500100, Telangana, India
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