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Invariant Gabor-Zernike descriptor for postal applications

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PL
Inwariantny deskryptor Gabora-Zernika dla zastosowań pocztowych
Języki publikacji
EN
Abstrakty
EN
In this paper a new solution of handwritten digits recognition system for postal applications is presented. Moreover, in this paper, a new method of handwritten characters recognition is introduced. The proposed algorithm is applied to classification of post mails on the basis of zip code information. In connection with this work the research was conducted with numeric characters used in real post code of mail pieces. Moreover, the article contains basic image processing for instance filtration binarization and normalization of the character. The main objective of this article is to use the Gabor filtration and Zernike moments to obtain a set of invariant features, on basis of which postal code will be recognized. The reported experiments' results prove the effectiveness of the proposed method. Furthermore, sources of errors as well as possible improvement of classification results will be discussed.
PL
W artykule przedstawiono nowe rozwiązanie zadania rozpoznawania znaków pisanych ręcznie dla zastosowań pocztowych. Zaproponowano algorytm klasyfikacji przesyłek pocztowych działający na podstawie informacji zawartej w zapisie kodu pocztowego. Ponadto w artykule opisano podstawowe operacje przetwarzania wstępnego tj. filtracje, binaryzacje oraz normalizacje obrazu znaku. Głównym nacisk położono na wykorzystanie filtracji Gabora i momentów Zernike do uzyskania zbioru cech na podstawie których rozpoznawano kod pocztowy. Otrzymane wyniki eksperymentów pozwoliły wykazać skuteczność proponowanej metody. Dodatkowo w pracy przedstawiono źródła potencjalnych błędów w procesie rozpoznawania, jak również zaproponowano możliwości poprawy wyników klasyfikacji.
Twórcy
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autor
autor
  • Institute of Telecommunications, Faculty of Telecommunications and Electrical Engineering University of Technology and Life Sciences (UTP) ul. Kaliskiego 7, 85-789 Bydgoszcz, Poland, andrys@utp.edu.pl
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BAT1-0041-0043
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