Abstract

Multiple-license plate recognition is gaining popularity in the Intelligent Transport System (ITS) applications for security monitoring and surveillance. Advancements in acquisition devices have increased the availability of high definition (HD) images, which can capture images of multiple vehicles. Since license plate (LP) occupies a relatively small portion of an image, therefore, detection of LP in an image is considered a challenging task. Moreover, the overall performance deteriorates when the aforementioned factor combines with varying illumination conditions, such as night, dusk, and rainy. As it is difficult to locate a small object in an entire image, this paper proposes a two-step approach for plate localization in challenging conditions. In the first step, the Faster-Region-based Convolutional Neural Network algorithm (Faster R-CNN) is used to detect all the vehicles in an image, which results in scaled information to locate plates. In the second step, morphological operations are employed to reduce non-plate regions. Meanwhile, geometric properties are used to localize plates in the HSI color space. This approach increases accuracy and reduces processing time. For character recognition, the look-up table (LUT) classifier using adaptive boosting with modified census transform (MCT) as a feature extractor is used. Both proposed plate detection and character recognition methods have significantly outperformed conventional approaches in terms of precision and recall for multiple plate recognition.

Highlights

  • With the ever-increasing traffic situations in modern cities, the demand for the Intelligent Transport System (ITS) is increasing rapidly

  • AC contains images passing taken by a stationary camera moving at low speed, LE contains images of cars taken by the roadside camera moving at variable speeds, RP is the most challenging part of this dataset that contains images captured by law enforcement vehicles

  • 5 Conclusions and future work In this paper, a multiple license plate recognition method, for high-resolution images, was presented, which works in challenging illumination conditions in real-time scenarios

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Summary

Introduction

With the ever-increasing traffic situations in modern cities, the demand for the ITS is increasing rapidly. The proposed technique improves the accuracy of plate detection in challenging environments that have non-uniform illumination and low resolution (based on distance from the camera). 2. Section 3 presents the proposed license plate detection and recognition method, detailed simulation results are presented in Sect.

Results
Conclusion
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