2016
DOI: 10.1007/s10044-016-0559-6
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Car make and model recognition under limited lighting conditions at night

Abstract: Car make and model recognition (CMMR) has become an important part of intelligent transport systems. Information provided by CMMR can be utilized when license plate numbers cannot be identified or fake number plates are used. CMMR can also be used when a certain model of a vehicle is required to be automatically identified by cameras. The majority of existing CMMR methods are designed to be used only in daytime when most of the car features can be easily seen. Few methods have been developed to cope with limit… Show more

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Cited by 31 publications
(19 citation statements)
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“…Liu et al [45] use deep relative distance trained on a vehicle re-identification task and propose training the neural net with Coupled Clusters Loss instead of triplet loss. Boonsim et al [46] propose a method for fine-grained recognition of vehicles at night. The authors use relative position and shape of features visible at night (e.g.…”
Section: B Fine-grained Recognition Of Vehiclesmentioning
confidence: 99%
“…Liu et al [45] use deep relative distance trained on a vehicle re-identification task and propose training the neural net with Coupled Clusters Loss instead of triplet loss. Boonsim et al [46] propose a method for fine-grained recognition of vehicles at night. The authors use relative position and shape of features visible at night (e.g.…”
Section: B Fine-grained Recognition Of Vehiclesmentioning
confidence: 99%
“…They evaluate two dictionary building approaches; single dictionary and modular dictionary and report an accuracy rate of 94.5% with a processing speed of 7.4 images per second. Noppakun Boonsim and Simant Prakoonwit propose a one-class classifier-based approach under limited lighting [19]. The proposed approach uses one-class SVM, decision tree, and K-Mean Nearest Neighbor (KNN) for classification and a majority vote of three is used for final prediction.…”
Section: Vehicle Make and Model Recognitionmentioning
confidence: 99%
“…Lights relative positions are determined using morphological operators, then the distance from edges of ROI and lights to the centre of ROI are calculated and used as the feature vector. The authors in [17] utilised a combination of salient geographical and shape features of taillight and license plate to cope with limited lighting conditions at night. They employed SVM, decision tree and k‐NN using a majority‐voting scheme.…”
Section: Related Workmentioning
confidence: 99%