Kyouiku Kanji Grade 1 Recognition Using MobileNet V2 Based on Android
Authors/Creators
Description
Character recognition has become a popular research topic in the field
of pattern recognition and machine learning, including handwriting
recognition, specifically kanji handwriting. This study performs
handwriting recognition of kyouiku kanji grade 1, which is the kanji
required to be learnt by grade 1 elementary school students in Japan.
This research uses ETL-9B dataset from Electrotechnical Laboratory
(now AIST), uses CNN MobileNet V2 deep learning method that has
been customized for mobile devices, and uses Android application as
the user interface implementation. Based on the study results, the
highest accuracy model was obtained with an accuracy of 96,6875% and
a size of 27.4MB for the alpha 1.0 hyperparameter. It can be concluded
that the CNN MobileNet V2 deep learning method has performed quite
well in the process of recognizing handwritten kyouiku kanji grade 1
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Kyouiku Kanji Grade 1 Recognition Using MobileNet V2.pdf
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Additional details
Dates
- Available
-
2025Free to read