SISTEM PENGENALAN TULISAN TANGAN PADA DOKUMEN YANG MENGANDUNG SINGKATAN TIDAK LAZIM MENGGUNAKAN SKRIPSI JARINGAN SARAF TIRUAN

Handwritten Character Recognition System (HCR) is classified into groups, offline and online. Offline HCR aims to recognize static image after handwritting is performed. As opposite, online HCR recognize image while handwriting is being performed. Offline HCR has more difficult challenges than onlin...

وصف كامل

محفوظ في:
التفاصيل البيبلوغرافية
المؤلف الرئيسي: KENNY EVEREST KARNAMA, 081411631044
التنسيق: Theses and Dissertations NonPeerReviewed
اللغة:English
Indonesian
منشور في: 2018
الموضوعات:
الوصول للمادة أونلاين:http://repository.unair.ac.id/80194/1/ST.SI.05-19%20Kar%20s%20abstract.pdf
http://repository.unair.ac.id/80194/2/ST.SI.05-19%20Kar%20s.pdf
http://repository.unair.ac.id/80194/
http://lib.unair.ac.id
الوسوم: إضافة وسم
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المؤسسة: Universitas Airlangga
اللغة: English
Indonesian
الوصف
الملخص:Handwritten Character Recognition System (HCR) is classified into groups, offline and online. Offline HCR aims to recognize static image after handwritting is performed. As opposite, online HCR recognize image while handwriting is being performed. Offline HCR has more difficult challenges than online character recognition due to insufficient temporal information such as number and direction of strokes, ink pressure, unpredictable and high variation of handwriting. These difficulties cause low accuracy achieved. The aim of this research is to detect existence of uncommon abbreviation on documents written in Bahasa Indonesia. Several steps conducted to detect uncommon abbreviations: collecting handwritten samples, performing image processing, neural network training. From classficiation process, there are two accuracy indicators used. Character accuracy by class and uncommon abbreviation detected. Character accuracy by class achieved is 60.47 % and for uncommon abbreviation detected accuracy is 27.89 %. Recognition performance achieved by using artificial neural network is better than other research using K-Nearest Neighbor where accuracy achieved is 46 %.