基于局部二进制模式和K近邻的拉丁字母手写识别

Vivi Oktavia, Novan Wijaya
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引用次数: 0

摘要

印尼共有26个拉丁字母,其中5个是元音,21个是辅音。这项研究将使用K-最近邻方法和局部二进制模式扩展来翻译拉丁对象的手写体。这项研究的重点是使用一些已经讨论过的方法进行实验。连接的拉丁字母有一些变体,这取决于作品的作者,因此将进行研究,以确定基于这些变体的草书拉丁字母。30名受访者每人在纸上写了26个大写字母和26个小写字母,然后对其进行扫描以提供图像数据。每十个响应者都用黑色、蓝色和红色的钢笔写字。识别过程分为两部分,分别使用780个图片数据集进行大写字母和非大写字母识别。在本研究中,使用了k次交叉验证,其中k=6。根据使用k=3、5和7的KNN的研究,在k=7时达到了最佳值,准确率为29.49%,准确度为33.88%,召回率为33.46%,F1得分为27.65%。对于非大写字符的识别,在k=3时发现了最好的结果,准确度、准确度、召回率和F1得分分别为26.28%、27.27%和22.7%。
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Pengenalan Tulisan Tangan Huruf Latin Bersambung Menggunakan Local Binary Pattern dan K-Nearest Neighbor
There are 26 Latin letters in Indonesia, 5 of which are vowels and 21 consonants. This study will translate handwriting with a Latin object using the K-Nearest Neighbor method with the Local Binary Pattern extension. The research is being done with a focus on experimentation using a few methods that have already been discussed. Concatenated Latin letters have a few variations that depend on the work's author, so research will be conducted to identify cursive Latin letters based on these variations. Each of the 30 respondents wrote 26 capital letters and 26 lowercase letters on paper, which was then scanned to provide the image data. Black, blue, and red pens were used to write by every ten responders. The recognition procedure is broken into two halves, capital and non-capital letter recognition using 780 picture datasets each. In the study, k-fold cross-validation is used, with k = 6. The best value was reached at k = 7 with 29.49 percent accuracy, 33.88 percent precision, recall 33.46 percent, and F1-score 27.65 percent according to the research utilizing KNN with values k = 3, 5, and 7. and for recognizing non-capital characters, the best result was found at k=3 with accuracy, precision, recall, and F1-score of 26.28, 27.27, and 22.7%, respectively.
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审稿时长
12 weeks
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