在巴西南方共同市场标准上训练基于深度学习的自动车牌识别系统的合成图像生成

IF 0.9 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Design Automation for Embedded Systems Pub Date : 2020-10-07 DOI:10.1007/s10617-020-09241-7
Gilles Silvano, Vinícius Ribeiro, Vitor Greati, Aguinaldo Bezerra, Ivanovitch Silva, Patricia Takako Endo, Theo Lynn
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引用次数: 0

摘要

车牌是车辆识别数据的主要来源,广泛应用于执法、电子收费和访问控制等领域。车牌检测(LPD)是车牌自动识别(ALPR)中的一个关键步骤,它通过为后续的车牌自动识别阶段划分搜索空间来降低复杂性。由于环境条件、遮挡和车牌变化等不利因素的影响,这一过程变得更加复杂。因此,它需要在每个用例的大量相关图像上训练模型。2018年,新的南方共同市场标准在四个南美国家生效。对于训练LPD监督模型来说,获得大量具有足够外观多样性的实际南方共同市场车牌是一个重大挑战,从而对南方共同市场国家的ALPR效果产生不利影响。本文提出了一种新的车牌嵌入方法,用于生成大量准确的南方共同市场车牌图像,足以用于训练监督LPD。我们通过基于深度学习的ALPR验证了这种方法,该ALPR使用卷积神经网络专门训练合成数据,并使用真实的停车场和交通摄像头图像进行了测试。实验结果表明,该方法的检测准确率为95%,平均运行时间为40 ms。
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Synthetic image generation for training deep learning-based automated license plate recognition systems on the Brazilian Mercosur standard

License plates are the primary source of vehicle identification data used in a wide range of applications including law enforcement, electronic tolling, and access control amongst others. License plate detection (LPD) is a critical process in automatic license plate recognition (ALPR) that reduces complexity by delimiting the search space for subsequent ALPR stages. It is complicated by unfavourable factors including environmental conditions, occlusion, and license plate variation. As such, it requires training models on substantial volumes of relevant images per use case. In 2018, the new Mercosur standard came in to effect in four South American countries. Access to large volumes of actual Mercosur license plates with sufficient presentation variety is a significant challenge for training supervised models for LPD, thereby adversely impacting the efficacy of ALPR in Mercosur countries. This paper presents a novel license plate embedding methodology for generating large volumes of accurate Mercosur license plate images sufficient for training supervised LPD. We validate this methodology with a deep learning-based ALPR using a convolutional neural network trained exclusively with synthetic data and tested with real parking lot and traffic camera images. Experiment results achieve detection accuracy of 95% and an average running time of 40 ms.

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来源期刊
Design Automation for Embedded Systems
Design Automation for Embedded Systems 工程技术-计算机:软件工程
CiteScore
2.60
自引率
0.00%
发文量
10
审稿时长
>12 weeks
期刊介绍: Embedded (electronic) systems have become the electronic engines of modern consumer and industrial devices, from automobiles to satellites, from washing machines to high-definition TVs, and from cellular phones to complete base stations. These embedded systems encompass a variety of hardware and software components which implement a wide range of functions including digital, analog and RF parts. Although embedded systems have been designed for decades, the systematic design of such systems with well defined methodologies, automation tools and technologies has gained attention primarily in the last decade. Advances in silicon technology and increasingly demanding applications have significantly expanded the scope and complexity of embedded systems. These systems are only now becoming possible due to advances in methodologies, tools, architectures and design techniques. Design Automation for Embedded Systems is a multidisciplinary journal which addresses the systematic design of embedded systems, focusing primarily on tools, methodologies and architectures for embedded systems, including HW/SW co-design, simulation and modeling approaches, synthesis techniques, architectures and design exploration, among others. Design Automation for Embedded Systems offers a forum for scientist and engineers to report on their latest works on algorithms, tools, architectures, case studies and real design examples related to embedded systems hardware and software. Design Automation for Embedded Systems is an innovative journal which distinguishes itself by welcoming high-quality papers on the methodology, tools, architectures and design of electronic embedded systems, leading to a true multidisciplinary system design journal.
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