Publication | Open Access
Classification and recognition of online hand-written alphabets using Machine Learning Methods
43
Citations
19
References
2021
Year
EngineeringMachine LearningHandwritingBiometricsWriter IdentificationImage AnalysisData MiningPattern RecognitionText RecognitionHand-written Alphabet RecognitionCharacter RecognitionSign IdentificationAmerican Sign LanguageMachine Learning MethodsOptical Character RecognitionComputer ScienceStatistical Pattern RecognitionOnline Hand-written AlphabetsComputer VisionPattern Recognition Application
Abstract The hand-written alphabet recognition and classification plays an important role in pattern recognition, computer vision as well as image processing. In last few decades, a plethora of applications based on this area are developed such as sign identification, multi lingual learning systems etc. This paper classifies samples of hand-written alphabets into different classes using various machine learning methods. The challenging factor in hand written alphabets recognition lie in variations of style, shape and size of the letters. In this paper a simplified and accurate methodology is proposed based upon engineered features which are evaluated and tested using MatLab tool in comparison to other existing methods. The proposed system achieves a substantial amount of accuracy of 98% as compared to the state of the art approaches.
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