Affiliation:
1. MEHMET AKİF ERSOY ÜNİVERSİTESİ, BUCAK ZELİHA TOLUNAY UYGULAMALI TEKNOLOJİ VE İŞLETMECİLİK YÜKSEKOKULU
2. OSMANİYE KORKUT ATA ÜNİVERSİTESİ, İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ
Abstract
An license plate recognition system (LPRS) generally provides control and security. These systems are created using methods such as artificial intelligence, machine learning, artificial neural networks (ANN), deep learning, fuzzy logic, expert systems, and image processing. This study aims to create an LPRS using artificial intelligence and image processing techniques. The prepared system is for rectangular-sized plates. An LPRS consists of 3 main stages. The first stage is to detect the plate region. At this stage, converting to grayscale, bilateral filtering, canny filtering, and contour were applied to vehicle images. The second stage is to crop the plate region. In the second stage, the masking method was employed. The pytesseract algorithm was used to recognize license plate characters in the last stage. To create the system, Raspberry Pi 4 Single-Board Computer (SBC) was used for hardware; python programming language was utilized for software. The results showed that the system worked successfully at the rate of 100% in the first two stages and at the rate of 91.82% in the last stage. The results suggest that the system works successfully.
Publisher
El-Cezeri: Journal of Science and Engineering
Subject
General Physics and Astronomy,General Engineering,General Chemical Engineering,General Chemistry,General Computer Science
Reference109 articles.
1. Aksoy, B. Python ile Imgeden Veriye Goruntu Isleme ve Uygulamalari. Revised edition, Nobel, Ankara, 2021.
2. Aksoy, B. Python ile Imgeden Veriye Goruntu Isleme ve Uygulamalari. Revised edition, Nobel, Ankara, 2021.
3. Anagnostopoulos, C. N. E. License Plate Recognition: A Brief Tutorial. IEEE Intelligent Transportation Systems Magazine, 2014, 6(1), 59-67.
4. Anagnostopoulos, C. N. E. License Plate Recognition: A Brief Tutorial. IEEE Intelligent Transportation Systems Magazine, 2014, 6(1), 59-67.
5. Basu, M. Gaussian-Based Edge-Detection Methods-A Survey. In IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews), 2002, 32(3), 252-260.