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Please use this identifier to cite or link to this item: http://142.54.178.187:9060/xmlui/handle/123456789/1037
Title: License number plate recognition system using entropy-based features selection approach with SVM
Authors: Khan, Muhammad Attique
Sharif, Muhammad Sharif C
Akram, Tallha Akram C
Yasmin, Mussarat Yasmin C
Keywords: COMSATS
traffic engineering computing
feature extraction
entropy
feature selection
image classification
image colour analysis
image fusion
image segmentation
support vector machines
Issue Date: 1-Feb-2018
Publisher: IET
Abstract: License plate recognition (LPR) system plays a vital role in security applications which include road traffic monitoring, street activity monitoring, identification of potential threats, and so on. Numerous methods were adopted for LPR but still, there is enough space for a single standard approach which can be able to deal with all sorts of problems such as light variations, occlusion, and multi-views. The proposed approach is an effort to deal under such conditions by incorporating multiple features extraction and fusion. The proposed architecture is comprised of four primary steps: (i) selection of luminance channel from CIE-Lab colour space, (ii) binary segmentation of selected channel followed by image refinement, (iii) a fusion of Histogram of oriented gradients (HOG) and geometric features followed by a selection of appropriate features using a novel entropy-based method, and (iv) features classification with support vector machine (SVM). To authenticate the results of proposed approach, different performance measures are considered. The selected measures are False positive rate (FPR), False negative rate (FNR), and accuracy which is achieved maximum up to 99.5%. Simulation results reveal that the proposed method performs exceptionally better compared with existing works.
URI: http://142.54.178.187:9060/xmlui/handle/123456789/1037
Appears in Collections:Journals

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