원문정보
초록
영어
Recently, the license plate OCR system has been commercialized in a variety of fields and preferred utilizing low-cost embedded systems using only cameras. This system has a high recognition rate of about 98% or more for the environments such as parking lots where non-vehicle is restricted; however, the environments where non-vehicle objects are not restricted, the recognition rate is about 50% to 70%. This low performance is due to the changes in the environment by non-vehicle objects in real-time situations that occur anomaly data which is similar to the license plates. In this paper, we implement the appropriate anomaly detection based on semisupervised learning for the license plate OCR system in the real-time environment where the appearance of non-vehicle objects is not restricted. In the experiment, we compare systems which anomaly detection is not implemented in the preceding research with the proposed system in this paper. As a result, the systems which anomaly detection is not implemented had a recognition rate of 77%; however, the systems with the semisupervised learning based on anomaly detection had 88% of recognition rate. Using the techniques of anomaly detection based on the semi-supervised learning was effective in detecting anomaly data and it was helpful to improve the recognition rate of real-time situations.
목차
1. Introduction
2. Related Work
2.1 Preceding License Plate OCR
2.2 Anomaly Detection
3. Design of anomaly detection
3.1 Semi-Supervised Learning
3.2 Data training
3.3 Analysis technique of predicted result
4. Experiment
4.1 Experiment Criteria
4.2 Validation Evaluation of Model
4.3 Performance Evaluation in Real-Time Video
5. Conclusion
Acknowledgement
References
