Hilditchs Algorithm Based Tamil Character Recognition
V. Karthikeyan

TL;DR
This paper presents a Tamil handwritten character recognition system utilizing Hilditch's algorithm and neural networks, achieving a high accuracy rate of 99% in recognizing Tamil characters.
Contribution
It introduces a novel approach combining Hilditch's algorithm with neural networks for Tamil handwritten character recognition, aiming for comprehensive character identification.
Findings
Achieved 99% accuracy in character recognition
Utilized Hilditch's algorithm for image processing
Recognized some Tamil characters with high precision
Abstract
Character identification plays a vital role in the contemporary world of Image processing. It can solve many composite problems and makes humans work easier. An instance is Handwritten Character detection. Handwritten recognition is not a novel expertise, but it has not gained community notice until Now. The eventual aim of designing Handwritten Character recognition structure with an accurateness rate of 100% is pretty illusionary. Tamil Handwritten Character recognition system uses the Neural Networks to distinguish them. Neural Network and structural characteristics are used to instruct and recognize written characters. After training and testing the exactness rate reached 99%. This correctness rate is extremely high. In this paper we are exploring image processing through the Hilditch algorithm foundation and structural characteristics of a character in the image. And we recognized…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Vehicle License Plate Recognition · Computer Science and Engineering
