基于CNN的印尼车牌识别算法中字符分割的改进

Ahmad Taufiq Musaddid, Agus Bejo, Risanuri Hidayat
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引用次数: 2

摘要

基于计算机视觉的车牌识别对于代替人眼识别车牌具有重要意义。在实际应用中,车牌识别算法需要对捕获车牌的各种方向、噪声和光照具有鲁棒性。传统上,一个具有挑战性的过程是分割检测板的特征。提取分割后的字符进行识别。因此,字符分割的性能直接影响到最终的分割结果。本研究的目的是利用卷积神经网络(CNN)的字符检测和带边界盒细化的滑动窗口对印尼车牌进行字符分割。在该方法中,使用CNN来区分字符区域和非字符区域。为了给CNN提供区域,采用了滑动窗口技术。最后对边界框进行细化以提高精度。将该模型应用于共包含982个字符的130幅印尼车牌图像,准确率达到87.06%。
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Improvement of Character Segmentation for Indonesian License Plate Recognition Algorithm using CNN
Recognition of vehicle license plate based on computer vision is very useful for replacing human eye from manually identifying license plate. In practice, the algorithm of licence plate recognition needs to be robust to various orientations, noises and illuminations of captured plates. Conventionally, one of the challenging processes is segmenting the characters of detected plate. The segmented characters are extracted to perform recognition. Thus, performance of character segmentation affects the final result. This research aims to perform character segmentation of Indonesian license plate by applying detection of character using Convolutional Neural Network (CNN) and sliding window with bounding box refinement. In this proposed method, CNN is used to distinguish character and non-character region. To feed regions to CNN, sliding window technique is applied. The final bounding boxes are finally refined to increase the accuracy. And the developed model was tested on 130 Images of Indonesian vehicle license plate which contain 982 characters in total, and yielded 87.06% of accuracy.
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