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License Plate Detection and Recognition Using Deeply Learned Convolutional Neural Networks

About

This work details Sighthounds fully automated license plate detection and recognition system. The core technology of the system is built using a sequence of deep Convolutional Neural Networks (CNNs) interlaced with accurate and efficient algorithms. The CNNs are trained and fine-tuned so that they are robust under different conditions (e.g. variations in pose, lighting, occlusion, etc.) and can work across a variety of license plate templates (e.g. sizes, backgrounds, fonts, etc). For quantitative analysis, we show that our system outperforms the leading license plate detection and recognition technology i.e. ALPR on several benchmarks. Our system is available to developers through the Sighthound Cloud API at https://www.sighthound.com/products/cloud

Syed Zain Masood, Guang Shu, Afshin Dehghan, Enrique G. Ortiz• 2017

Related benchmarks

TaskDatasetResultRank
License Plate RecognitionEnglishLP (test)
Recognition Rate0.98
42
License Plate RecognitionOpenALPR-EU
Recognition Rate93.5
20
Automatic License Plate RecognitionSSIG (test)
Vehicle Correctness89.8
8
Automatic License Plate RecognitionUFPR-ALPR
Recognition Rate (>= 6 Chars)76.67
6
License Plate RecognitionSSIG-SegPlate
Recognition Rate82.8
5
License Plate RecognitionUCSD-Stills
Recognition Rate98.3
2
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