Improvement of QR Code Recognition Based on Pillbox Filter Analysis

The objective of this paper is to perform the innovation design for improving the recognition of a captured QR code image with blur through the Pillbox filter analysis. QR code images can be captured by digital video cameras. Many factors contribute to QR code decoding failure, such as the low quali...

Full description

Bibliographic Details
Main Authors: Jia-Shing Sheu, Kai-Chung Teng
Format: Article
Language:English
Published: Taiwan Association of Engineering and Technology Innovation 2013-04-01
Series:International Journal of Engineering and Technology Innovation
Subjects:
Online Access:http://ojs.imeti.org/index.php/IJETI/article/view/104
id doaj-caa6f784cae54b34b249d025ac9526fa
record_format Article
spelling doaj-caa6f784cae54b34b249d025ac9526fa2020-11-24T20:58:33ZengTaiwan Association of Engineering and Technology InnovationInternational Journal of Engineering and Technology Innovation2223-53292226-809X2013-04-0132Improvement of QR Code Recognition Based on Pillbox Filter AnalysisJia-Shing SheuKai-Chung TengThe objective of this paper is to perform the innovation design for improving the recognition of a captured QR code image with blur through the Pillbox filter analysis. QR code images can be captured by digital video cameras. Many factors contribute to QR code decoding failure, such as the low quality of the image. Focus is an important factor that affects the quality of the image. This study discusses the out-of-focus QR code image and aims to improve the recognition of the contents in the QR code image. Many studies have used the pillbox filter (circular averaging filter) method to simulate an out-of-focus image. This method is also used in this investigation to improve the recognition of a captured QR code image. A blurred QR code image is separated into nine levels. In the experiment, four different quantitative approaches are used to reconstruct and decode an out-of-focus QR code image. These nine reconstructed QR code images using methods are then compared. The final experimental results indicate improvements in identification.http://ojs.imeti.org/index.php/IJETI/article/view/104QR codepillbox filterrecognition
collection DOAJ
language English
format Article
sources DOAJ
author Jia-Shing Sheu
Kai-Chung Teng
spellingShingle Jia-Shing Sheu
Kai-Chung Teng
Improvement of QR Code Recognition Based on Pillbox Filter Analysis
International Journal of Engineering and Technology Innovation
QR code
pillbox filter
recognition
author_facet Jia-Shing Sheu
Kai-Chung Teng
author_sort Jia-Shing Sheu
title Improvement of QR Code Recognition Based on Pillbox Filter Analysis
title_short Improvement of QR Code Recognition Based on Pillbox Filter Analysis
title_full Improvement of QR Code Recognition Based on Pillbox Filter Analysis
title_fullStr Improvement of QR Code Recognition Based on Pillbox Filter Analysis
title_full_unstemmed Improvement of QR Code Recognition Based on Pillbox Filter Analysis
title_sort improvement of qr code recognition based on pillbox filter analysis
publisher Taiwan Association of Engineering and Technology Innovation
series International Journal of Engineering and Technology Innovation
issn 2223-5329
2226-809X
publishDate 2013-04-01
description The objective of this paper is to perform the innovation design for improving the recognition of a captured QR code image with blur through the Pillbox filter analysis. QR code images can be captured by digital video cameras. Many factors contribute to QR code decoding failure, such as the low quality of the image. Focus is an important factor that affects the quality of the image. This study discusses the out-of-focus QR code image and aims to improve the recognition of the contents in the QR code image. Many studies have used the pillbox filter (circular averaging filter) method to simulate an out-of-focus image. This method is also used in this investigation to improve the recognition of a captured QR code image. A blurred QR code image is separated into nine levels. In the experiment, four different quantitative approaches are used to reconstruct and decode an out-of-focus QR code image. These nine reconstructed QR code images using methods are then compared. The final experimental results indicate improvements in identification.
topic QR code
pillbox filter
recognition
url http://ojs.imeti.org/index.php/IJETI/article/view/104
work_keys_str_mv AT jiashingsheu improvementofqrcoderecognitionbasedonpillboxfilteranalysis
AT kaichungteng improvementofqrcoderecognitionbasedonpillboxfilteranalysis
_version_ 1716785518219362304