Improvement accuracy of recognition isolated Balinese characters with Deep Convolution Neural Network

  • Teja Murti I
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Abstract

The numbers of Balinese script and the low quality of palm leaf manuscripts provide a challenge for testing and evaluation for character recognition. The aim of high accuracy for character recognition of Balinese script,we implementation Deep Convolution Neural Network using SmallerVGG (Visual Geometry Group) Architectur for character recognition on palm leaf manuscripts. We evaluated the performance that methods and we get accuracy 87,23% .

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APA

Teja Murti, I. B. T. (2019). Improvement accuracy of recognition isolated Balinese characters with Deep Convolution Neural Network. Journal of Applied Intelligent System, 4(1), 22–27. https://doi.org/10.33633/jais.v4i1.2289

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