Detecting Similarity License Plate Vehicle License Via Using Deep CNNs in Complex Surroundings
Main Article Content
Abstract
As our society has developed, cars on the road have increased. Manual license plate recognition is challenging since it is significantly slower in real-time than when performed by a machine. The bulk of license plate recognition systems utilized morphological image processing until recently. The detection rate falls drastically under challenging situations (when the license plate is blurry, for example). We suggest a novel approach to license plate recognition as a solution to this problem. It was positioning a license plate. The study presented a deep learning-based vehicle classifier to localize license plates and numbers. Instead of bounding rectangles, the classifier outputs determining quadrilaterals for vehicle number estimate with license plate localization. The suggested DCNN model training began with an initial weight that had been trained without the classification head, resulting in a total training iteration of roughly 9000 for the DCNN model, including transfer learning. The DCNN model could start at an intelligent point and optimize all functional heads. The DCNN obtained 97.5% classification accuracy in "vehicle number estimate and license plate localization.
Article Details

This work is licensed under a Creative Commons Attribution 4.0 International License.