Automatic license plate recognition plays a crucial role in modern transportation systems such as for traffic monitoring and vehicle violation detection. In real-world scenarios, license plate recognition still faces many challenges and is impaired by unpredictable interference such as weather or lighting conditions. Many machine learning based ALPR solutions have been proposed to solve such challenges in recent years. However, most are not convincing, either because their results are evaluated on small or simple datasets that lack diverse surroundings, or because they require powerful hardware to achieve a reasonable frames-per-second in real-world applications. In this paper, we propose a novel segmentation-free framework for license plate recognition and introduce NP-ALPR, a diverse and challenging dataset which resembles real-world scenarios. The proposed network model consists of the latest deep learning methods and state-of-the-art ideas, and benefits from a novel network architecture. It achieves higher accuracy with lower computational requirements than previous works. We evaluate the effectiveness of the proposed method on three different datasets and show a recognition accuracy of over 99% and over 70 fps, demonstrating that our method is not only robust but also computationally efficient.
翻译:自动牌照识别在交通监测和车辆违规探测等现代运输系统中发挥着关键作用。在现实世界中,牌照识别仍面临许多挑战,并受到天气或照明条件等无法预测的干扰而受到损害。许多基于机器学习的ALPR解决方案近年来被提出来应对此类挑战。然而,大多数都无法令人信服,因为其结果是在缺乏不同环境的小型或简单数据集上评价的,或者因为它们需要强大的硬件才能在现实世界应用中实现合理的每秒框架合理。在本文中,我们提议了一个无新颖的零分割框架来识别牌照识别,并引入了类似于现实世界情景的多样化和具有挑战性的数据集。拟议的网络模型包括最新的深层学习方法和最新最新最新设计理念,以及新网络结构的好处。它比以往的计算要求更准确。我们评估了三种不同数据集的拟议方法的有效性,并显示超过99%和70英尺的准确度,这表明我们的方法不仅可靠,而且具有计算效率。