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首页> 外文期刊>International Journal of Intelligent Systems and Applications >Parallel Implementation of a Video-based Vehicle Speed Measurement System for Municipal Roadways
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Parallel Implementation of a Video-based Vehicle Speed Measurement System for Municipal Roadways

机译:基于视频的市政道路车速测量系统的并行实现

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摘要

Nowadays, Intelligent Transportation Systems (ITS) are known as powerful solutions for handling traffic-related issues. ITS are used in various applications such as traffic signal control, vehicle counting, and automatic license plate detection. In the special case, video cameras are applied in ITS which can provide useful information after processing their outputs, known as Video-based Intelligent Transportation Systems (V-ITS). Among various applications of V-ITS, automatic vehicle speed measurement is a fast-growing field due to its numerous benefits. In this regard, visual appearance-based methods are common types of video-based speed measurement approaches which suffer from a computationally intensive performance. These methods repeatedly search for special visual features of vehicles, like the license plate, in consecutive frames. In this paper, a parallelized version of an appearance-based speed measurement method is presented which is real-time and requires lower computational costs. To acquire this, data-level parallelism was applied on three computationally intensive modules of the method with low dependencies using NVidia’s CUDA platform. The parallelization process was performed by the distribution of the method’s constituent modules on multiple processing elements, which resulted in better throughputs and massively parallelism. Experimental results have shown that the CUDA-enabled implementation runs about 1.81 times faster than the main sequential approach to calculate each vehicle’s speed. In addition, the parallelized kernels of the mentioned modules provide 21.28, 408.71 and 188.87 speed-up in singularly execution. The reason for performing these experiments was to clarify the vital role of computational cost in developing video-based speed measurement systems for real-time applications.
机译:如今,智能交通系统(ITS)被称为处理交通相关问题的强大解决方案。 ITS用于各种应用中,例如交通信号控制,车辆计数和自动车牌检测。在特殊情况下,摄像机应用于ITS,可在处理其输出后提供有用的信息,称为基于视频的智能运输系统(V-ITS)。在V-ITS的各种应用中,由于其众多的优势,自动车速测量是一个快速发展的领域。在这方面,基于视觉外观的方法是基于视频的速度测量方法的常见类型,其遭受计算量大的性能的困扰。这些方法在连续的帧中反复搜索车辆的特殊视觉特征,例如车牌。在本文中,提出了一种基于外观的速度测量方法的并行版本,该方法是实时的并且需要较低的计算成本。为了实现这一点,使用NVidia的CUDA平台将数据级并行性应用于该方法的三个计算密集型模块,这些模块具有较低的依赖性。并行化过程是通过将方法的组成模块分布在多个处理元素上来执行的,从而提高了吞吐量并提高了并行度。实验结果表明,启用CUDA的实现比计算每个车辆速度的主要顺序方法快1.81倍。另外,提到的模块的并行化内核在单执行时提供了21.28、408.71和188.87的加速。进行这些实验的原因是要弄清计算成本在开发用于实时应用的基于视频的速度测量系统中的重要作用。

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