This paper presents a model for recognizing handwritten Meitei Mayek script, utilizing local binary pattern features and support vector machine classification, achieving a highest recognition rate of 93.33%. The research contributes both a substantial dataset of 3,780 characters collected from various individuals and a systematic methodology for character recognition, consisting of image acquisition, pre-processing, feature extraction, and recognition. Future work aims to enhance recognition techniques and expand the dataset to include complete sentences.
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