Recurrence sorting method for improved accuracy of unconstrained fast-moving vehicle license plate recognition system

A. Samad, Towneda Akhter Prema
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引用次数: 1

Abstract

Automatic Real-Time Vehicle License Plate recognition systemsface a wide variety of challenges to accurately reading the number sequences present in license plates when deployed in the real world. The uncertainty of the real-world license plate recognition system is addressed in this research and proposes a novel method of filtering out inaccurate results based on recurrence-based sorting of the best readable character sequences. The problems of unconstrained real-world real-time license plate recognition have been discussed thoroughly throughout the paper and redefined the problem statement towards attaining the best readability instead of best visibility. An end-to-end cascade neural network architecture has been developed to capture license plate readings in real time. Then the novel recurrence-based iteration method was introduced to sort the Top 1 of the best reading of a unique license plate tracked across the frame where character sequence reading accuracy has been improved by up to 54% when combined with the introduced garbage factor filtering method. The experimental evidence indicated that the traditional confidence-based sorting is prone to failure due to unconstrained real-world uncertainties and accuracy is thoroughly compared with our novel method to illustrate novelty. The system has been deployed in the real world on an embedded system with a substantial amount of vehicle traffic for testing and validation.
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提高无约束快速移动车辆车牌识别精度的递归分选方法
自动实时车牌识别系统在实际应用时,要准确读取车牌中的数字序列,面临着各种各样的挑战。本文针对现实车牌识别系统的不确定性,提出了一种基于递归的最佳可读字符序列排序方法来过滤不准确的结果。本文对无约束现实实时车牌识别问题进行了深入的讨论,并重新定义了问题表述,以达到最佳的可读性而不是最佳的可视性。开发了端到端的级联神经网络架构,用于实时捕获车牌读数。在此基础上,引入基于递归迭代的新方法,对整帧唯一车牌的最佳读取Top 1进行排序,与引入的垃圾因子滤波方法相结合,字符序列读取精度提高了54%。实验证据表明,传统的基于置信度的分类由于不受约束的现实世界的不确定性而容易失败,并且与我们的新方法进行了彻底的比较,以说明新颖性。该系统已经部署在一个具有大量车辆流量的嵌入式系统上,用于测试和验证。
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