K-nearest neighbor performance for Nusantara scripts image transliteration

Anastasia Rita Widiarti
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引用次数: 1

Abstract

The concept of classification using the k-nearest neighbor (KNN) method is simple, easy to understand, and easy to be implemented in the system. The main challenge in classification with KNN is determining the proximity measure of an object and how to make a compact reference class. This paper studied the implementation of the KNN for the automatic transliteration of Javanese, Sundanese, and Bataknese script images into Roman script. The study used the KNN algorithm with the number k set to 1, 3, 5, 7, and 9. Tests used the image dataset of 2520 data. With the 3-fold and 10-fold cross-validation, the results exposed the accuracy differences if the area of the extracted image, the number of neighbors in the classification, and the number of data training were different.
k近邻性能对努沙塔拉文字图像的音译
使用k近邻(KNN)方法进行分类的概念简单,易于理解,并且易于在系统中实现。使用KNN进行分类的主要挑战是确定对象的接近度量以及如何构建紧凑的参考类。本文研究了爪哇语、巽他语和巴塔克语文字图像自动转写为罗马文字的KNN实现。本研究使用KNN算法,将k设置为1、3、5、7和9。测试使用了包含2520个数据的图像数据集。通过3倍交叉验证和10倍交叉验证,结果揭示了提取图像的面积、分类中邻居的数量和数据训练次数不同时的准确率差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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