عناصر مشابهة

Yemeni Paper Currency Recognition

تفصيل البيانات البيبلوغرافية
المصدر:مجلة بحوث جامعة تعز - سلسلة الآداب والعلوم الإنسانية والتطبيقية
الناشر: جامعة تعز
المؤلف الرئيسي: Alnowaini, Ghazi (مؤلف)
مؤلفين آخرين: Alabsi, Aisha (Co-Author)
المجلد/العدد:ع28
محكمة:نعم
الدولة:اليمن
التاريخ الميلادي:2021
الصفحات:20 - 29
رقم MD:1261801
نوع المحتوى: بحوث ومقالات
اللغة:English
قواعد المعلومات:EduSearch
AraBase
HumanIndex
مواضيع:
رابط المحتوى:
LEADER 02838nam a2200253 4500
001 2013931
041 |a eng 
044 |b اليمن 
100 |9 672236  |a Alnowaini, Ghazi   |e Author 
245 |a Yemeni Paper Currency Recognition 
260 |b جامعة تعز  |c 2021  |g سبتمبر 
300 |a 20 - 29 
336 |a بحوث ومقالات  |b Article 
520 |b "With the great technological advances in colour printing, duplicating and scanning, counterfeit notes haves posed an increasing threat to currency markets all over the world. Yemeni Currency Recognition System (YCRS) is type Pattern Recognition technology that used to identify Paper Currency of Yemeni country. Due to used currencies in day life, Automatic methods for currency recognition has been increasing. The applications of YCRS is pivotal for banking automation in many sections such as Cash counting machine and ATM machine. However, there is a rare research done towards designing and implementing recognition of Yemeni currency. The absence of such currency recognition is a big gap in Yemen. In this paper, Yemeni Currency Recognition System (YCRS) proposes for recognize all denominations of Yemeni currency notes and enhance the bank system such as counting machines by adding some currency notes. This paper offers a technical remedial solution to this problem for all denominations using image processing and machine learning techniques. The system structure consists of five phases: currency image brings, pre-processing, feature extraction, classification and validation. This research done in software engineering lab, faculty of engineering and information technology, Taiz University from period Dec 2019 until March 2020. In this research, we used different methods in Image Processing such as GLCM, SURF and HSV and Machine learning such as SVM. The Accuracy of this system is very high, it was 99% with fast processing speed. YCRS must be accurate and highly-efficient. It will be the second project taken Yemeni currency, however we are the first people used this technique." 
653 |a القطاع المصرفي  |a الأوراق المالية  |a الصراف الآلي  |a الخدمات البنكية 
692 |b Yemeni Currency Recognition  |b Image Processing  |b SURF  |b SVM  |b GLCM and WED  |b INTRODUCTION 
700 |9 672425  |a Alabsi, Aisha  |e Co-Author 
773 |4 الادب  |4 العلوم الاجتماعية ، متعددة التخصصات  |6 Literature  |6 Social Sciences, Interdisciplinary  |c 002  |e University of Taiz Research Journal - Arts and Humanities  |l 028  |m ع28  |o 0931  |s مجلة بحوث جامعة تعز - سلسلة الآداب والعلوم الإنسانية والتطبيقية  |v 000 
856 |u 0931-000-028-002.pdf 
930 |d n  |p y  |q n 
995 |a EduSearch 
995 |a AraBase 
995 |a HumanIndex 
999 |c 1261801  |d 1261801