首页|Multi-Element Deep Learning Using False Detection Images for Training Set - Effective For License Plate Detection

Multi-Element Deep Learning Using False Detection Images for Training Set - Effective For License Plate Detection

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In deep learning, in order to improve learning performance, preprocessing and ingenuity to combine a plurality of discriminators are performed. It can be inferred that it has elements exceeding the set of learning. Therefore, a configuration to combine multiple recognition elements with low loss will be studied. The advance category classification method is expected to narrow the scope of learning in the next stage. Combining elements specialized for FalsePositive/FalseNegative removal after the positive/negative determination is considered to be effective if the accuracy of the subsequent stage is high. We conducted a license plate recognition experiment by combining these and achieved the best performance for Caltech data.

Two-stageError CorrectionRe-LearningLicense Plate

Kazuo OHZEKI、Yoshikazu KIDO、Yutaka HIRAKAWA、Stefan SCHNEIDER

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Shibaura Institute of Technology

Faculty of Electrical Engineering Kempten University of Applied Sciences

2017

電子情報通信学会技術研究報告

電子情報通信学会技術研究報告

ISSN:0913-5685
年,卷(期):2017.117(514)