Scene text detection and recognition, such as automatic license plate recognition, is a technology utilized in various applications. Although numerous studies have been conducted to improve recognition accuracy, accuracy decreases when low-quality legacy license plate images are input into a recognition module due to low image quality and a lack of resolution. To obtain better recognition accuracy, this study proposes a high-frequency augmented license plate recognition model in which the super-resolution module and the license plate recognition module are integrated and trained collaboratively via a proposed gradual end-to-end learning-based optimization. To optimally train our model, we propose a holistic feature extraction method that effectively prevents generating grid patterns from the super-resolved image during the training process. Moreover, to exploit high-frequency information that affects the performance of license plate recognition, we propose a license plate recognition module based on high-frequency augmentation. Furthermore, we propose a gradual end-to-end learning process based on weight freezing with three steps. Our three-step methodological approach can properly optimize each module to provide robust recognition performance. The experimental results show that our model is superior to existing approaches in low-quality legacy conditions on UFPR and Greek vehicle datasets.
[1]
Y. Chan,et al.
A New Image Enhancement and Super Resolution technique for license plate recognition
,
2021,
Heliyon.
[2]
S. Yoo,et al.
Super-Resolved Recognition of License Plate Characters
,
2021,
Mathematics.
[3]
Alexey Gruzdev,et al.
LPRNet: License Plate Recognition via Deep Neural Networks
,
2018,
ArXiv.
[4]
Chunhua Shen,et al.
Adversarial Generation of Training Examples: Applications to Moving Vehicle License Plate Recognition
,
2017
.
[5]
Jimmy Ba,et al.
Adam: A Method for Stochastic Optimization
,
2014,
ICLR.