Dense-cluster based voting approach for license plate identification

License plate recognition is a challenging due to different colors of foreground and background especially in Malaysia, where private vehicle (e.g., cars) displays dark background and public vehicle (e.g., taxis/cabs) displays white background. This paper presents a new method called Dense Cluster b...

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Main Authors: Asadzadehkaljahi, Maryam, Shivakumara, Palaiahnakote, Roy, Sangheeta, Olatunde, Mojeed Salmon, Anisi, Mohammad Hossein, Lu, Tong, Pal, Umapada
Format: Article
Published: Taylor's University 2018
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author Asadzadehkaljahi, Maryam
Shivakumara, Palaiahnakote
Roy, Sangheeta
Olatunde, Mojeed Salmon
Anisi, Mohammad Hossein
Lu, Tong
Pal, Umapada
author_facet Asadzadehkaljahi, Maryam
Shivakumara, Palaiahnakote
Roy, Sangheeta
Olatunde, Mojeed Salmon
Anisi, Mohammad Hossein
Lu, Tong
Pal, Umapada
author_sort Asadzadehkaljahi, Maryam
collection UM
description License plate recognition is a challenging due to different colors of foreground and background especially in Malaysia, where private vehicle (e.g., cars) displays dark background and public vehicle (e.g., taxis/cabs) displays white background. This paper presents a new method called Dense Cluster based Voting (DCV) for identifying an input license plate image as normal or taxi such that suitable recognition algorithms can be used to achieve better recognition rate. The proposed method uses Canny edge image to separate edges as foreground and non-edges as background. Then the proposed method exploits the intensity values corresponding to foreground and background pixels from the input gray image. Next, k-means clustering is proposed to classify intensity values into a Max cluster, which contains high values and a Min cluster, which contains low values for both intensity of foreground and background pixels. This process gives four clusters for the input image. The number of pixels in clusters (dense cluster) and the standard deviation are computed for deriving new hypotheses. Finally, we propose voting for the responses of hypotheses for identification. Classification results with existing methods show that the proposed method outperforms existing methods since the it works based on the distribution of foreground and background pixels rather than character shapes. Furthermore, the recognition results from classification show that recognition rate improves significantly compared to prior classification.
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spelling um.eprints-224432019-09-19T07:46:28Z http://eprints.um.edu.my/22443/ Dense-cluster based voting approach for license plate identification Asadzadehkaljahi, Maryam Shivakumara, Palaiahnakote Roy, Sangheeta Olatunde, Mojeed Salmon Anisi, Mohammad Hossein Lu, Tong Pal, Umapada QA75 Electronic computers. Computer science License plate recognition is a challenging due to different colors of foreground and background especially in Malaysia, where private vehicle (e.g., cars) displays dark background and public vehicle (e.g., taxis/cabs) displays white background. This paper presents a new method called Dense Cluster based Voting (DCV) for identifying an input license plate image as normal or taxi such that suitable recognition algorithms can be used to achieve better recognition rate. The proposed method uses Canny edge image to separate edges as foreground and non-edges as background. Then the proposed method exploits the intensity values corresponding to foreground and background pixels from the input gray image. Next, k-means clustering is proposed to classify intensity values into a Max cluster, which contains high values and a Min cluster, which contains low values for both intensity of foreground and background pixels. This process gives four clusters for the input image. The number of pixels in clusters (dense cluster) and the standard deviation are computed for deriving new hypotheses. Finally, we propose voting for the responses of hypotheses for identification. Classification results with existing methods show that the proposed method outperforms existing methods since the it works based on the distribution of foreground and background pixels rather than character shapes. Furthermore, the recognition results from classification show that recognition rate improves significantly compared to prior classification. Taylor's University 2018 Article PeerReviewed Asadzadehkaljahi, Maryam and Shivakumara, Palaiahnakote and Roy, Sangheeta and Olatunde, Mojeed Salmon and Anisi, Mohammad Hossein and Lu, Tong and Pal, Umapada (2018) Dense-cluster based voting approach for license plate identification. Journal of Engineering Science and Technology, 13 (Sp.). pp. 34-47. ISSN 1823-4690, http://jestec.taylors.edu.my/Special%20Issue%20ICCSIT%202018/ICCSIT18_04.pdf
spellingShingle QA75 Electronic computers. Computer science
Asadzadehkaljahi, Maryam
Shivakumara, Palaiahnakote
Roy, Sangheeta
Olatunde, Mojeed Salmon
Anisi, Mohammad Hossein
Lu, Tong
Pal, Umapada
Dense-cluster based voting approach for license plate identification
title Dense-cluster based voting approach for license plate identification
title_full Dense-cluster based voting approach for license plate identification
title_fullStr Dense-cluster based voting approach for license plate identification
title_full_unstemmed Dense-cluster based voting approach for license plate identification
title_short Dense-cluster based voting approach for license plate identification
title_sort dense cluster based voting approach for license plate identification
topic QA75 Electronic computers. Computer science
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AT olatundemojeedsalmon denseclusterbasedvotingapproachforlicenseplateidentification
AT anisimohammadhossein denseclusterbasedvotingapproachforlicenseplateidentification
AT lutong denseclusterbasedvotingapproachforlicenseplateidentification
AT palumapada denseclusterbasedvotingapproachforlicenseplateidentification