How many labeled license plates are needed?
August 25, 2018 Β· Declared Dead Β· π Chinese Conference on Pattern Recognition and Computer Vision
"No code URL or promise found in abstract"
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Authors
Changhao Wu, Shugong Xu, Guocong Song, Shunqing Zhang
arXiv ID
1808.08410
Category
cs.CV: Computer Vision
Citations
21
Venue
Chinese Conference on Pattern Recognition and Computer Vision
Last Checked
4 months ago
Abstract
Training a good deep learning model often requires a lot of annotated data. As a large amount of labeled data is typically difficult to collect and even more difficult to annotate, data augmentation and data generation are widely used in the process of training deep neural networks. However, there is no clear common understanding on how much labeled data is needed to get satisfactory performance. In this paper, we try to address such a question using vehicle license plate character recognition as an example application. We apply computer graphic scripts and Generative Adversarial Networks to generate and augment a large number of annotated, synthesized license plate images with realistic colors, fonts, and character composition from a small number of real, manually labeled license plate images. Generated and augmented data are mixed and used as training data for the license plate recognition network modified from DenseNet. The experimental results show that the model trained from the generated mixed training data has good generalization ability, and the proposed approach achieves a new state-of-the-art accuracy on Dataset-1 and AOLP, even with a very limited number of original real license plates. In addition, the accuracy improvement caused by data generation becomes more significant when the number of labeled images is reduced. Data augmentation also plays a more significant role when the number of labeled images is increased.
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