Multi-Oriented License Plate Detection Based On Convolutional Neural Networks

Author(s):  
Lam Mai ◽  
Xiu-Zhi Chen ◽  
Yen-Lin Chen
Sensors ◽  
2019 ◽  
Vol 19 (5) ◽  
pp. 1175 ◽  
Author(s):  
Jing Han ◽  
Jian Yao ◽  
Jiao Zhao ◽  
Jingmin Tu ◽  
Yahui Liu

License plate detection (LPD) is the first and key step in license plate recognition.State-of-the-art object-detection algorithms based on deep learning provide a promising form ofLPD. However, there still exist two main challenges. First, existing methods often enclose objectswith horizontal rectangles. However, horizontal rectangles are not always suitable since licenseplates in images are multi-oriented, reflected by rotation and perspective distortion. Second, thescale of license plates often varies, leading to the difficulty of multi-scale detection. To addressthe aforementioned problems, we propose a novel method of multi-oriented and scale-invariantlicense plate detection (MOSI-LPD) based on convolutional neural networks. Our MOSI-LPD tightlyencloses the multi-oriented license plates with bounding parallelograms, regardless of the licenseplate scales. To obtain bounding parallelograms, we first parameterize the edge points of licenseplates by relative positions. Next, we design mapping functions between oriented regions andhorizontal proposals. Then, we enforce the symmetry constraints in the loss function and train themodel with a multi-task loss. Finally, we map region proposals to three edge points of a nearby licenseplate, and infer the fourth point to form bounding parallelograms. To achieve scale invariance, wefirst design anchor boxes based on inherent shapes of license plates. Next, we search different layersto generate region proposals with multiple scales. Finally, we up-sample the last layer and combineproposal features extracted from different layers to recognize true license plates. Experimental resultshave demonstrated that the proposed method outperforms existing approaches in terms of detectinglicense plates with different orientations and multiple scales.


2017 ◽  
Vol 22 (19) ◽  
pp. 6429-6440 ◽  
Author(s):  
Muhammad Aasim Rafique ◽  
Witold Pedrycz ◽  
Moongu Jeon

2019 ◽  
Vol 31 (8) ◽  
pp. 1320 ◽  
Author(s):  
Hanli Zhao ◽  
Junru Liu ◽  
Lei Jiang ◽  
Jianbing Shen ◽  
Mingxiao Hu

The vehicle classification and detecting its license plate are important tasks in intelligent security and transportation systems. However, theexisting methods of vehicle classification and detection are highly complex which provides coarse-grained outcomesbecause of underfitting or overfitting of the model. Due toadvanced accomplishmentsof the Deep Learning, it was efficiently implemented to image classification and detection of objects. This proposed paper come up with a new approach which makes use of convolutional neural networks concept in Deep Learning.It consists of two steps: i) vehicle classification ii) vehicle license plate recognition. Numerous classicmodules of neural networks hadbeen implemented in training and testing the vehicle classification and detection of license plate model, such as CNN (convolutional neural networks), TensorFlow, and Tesseract-OCR. The suggestedtechnique candetermine the vehicle type, number plate and other alternative dataeffectively. This model provides security and log details regarding vehicles by using AI Surveillance. It guides the surveillance operators and assists human resources. With the help of the original dataset (training) and enriched dataset (testing), this customized model(algorithm) can achieve best outcomewith a standard accuracy of around 97.32% inclassification and detection of vehicles. By enlarging the quantity of the training dataset, the loss function and mislearning rate declines progressively. Therefore, this proposedmodelwhich uses DeepLearning hadbetterperformance and flexibility. When compared to outstandingtechniques in the strategicImage datasets, this deep learning modelscan gethigher competitor outcomes. Eventually, the proposed system suggests modern methods for advancementof the customized model and forecasts the progressivegrowth of deep learningperformance in the explorationof artificial intelligence (AI) &machine learning (ML) techniques.


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