2018
DOI: 10.3837/tiis.2018.11.019
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A Vehicular License Plate Recognition Framework For Skewed Images

Abstract: Vehicular license plate (LP) recognition system has risen as a significant field of research recently because various explorations are currently being conducted by the researchers to cope with the challenges of LPs which include different illumination and angular situations. This research focused on restricted conditions such as using image of only one vehicle, stationary background, no angular adjustment of the skewed images. A real time vehicular LP recognition scheme is proposed for the skewed images for de… Show more

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Cited by 3 publications
(3 citation statements)
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“…Several methods have been introduced for character segmentation. For instance, Arafat et al [9] proposed a license plate character segmentation method based on CCA. The detected license plate region was converted into a binary image and eight connected components were used for character region labeling.…”
Section: License Plate Character Segmentationmentioning
confidence: 99%
See 2 more Smart Citations
“…Several methods have been introduced for character segmentation. For instance, Arafat et al [9] proposed a license plate character segmentation method based on CCA. The detected license plate region was converted into a binary image and eight connected components were used for character region labeling.…”
Section: License Plate Character Segmentationmentioning
confidence: 99%
“…Jin et al [3] 85.48 91.75 85.35 Arafat et al [9] 85.45 93.45 90.37 Samma et al [12] 80.35 -91.70 Tabrizi et al [13] 84.45 90.50 92.86 Niu et al [28] 85.80 -89.32 Li et al [45] --92.71 Thakur et al [37] 82…”
Section: Detection Segmentation Classificationmentioning
confidence: 99%
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