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Algorithm design for automated transportation photo enforcement camera image and video quality diagnostic check modules

机译:自动运输照片执法摄像机图像和视频质量诊断检查模块的算法设计

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摘要

Photo enforcement devices for traffic rules such as red lights, toll, stops, and speed limits are increasingly being deployed in cities and counties around the world to ensure smooth traffic flow and public safety. These are typically unattended fielded systems, and so it is important to periodically check them for potential image/video quality problems that might interfere with their intended functionality. There is interest in automating such checks to reduce the operational overhead and human error involved in manually checking large camera device fleets. Examples of problems affecting such camera devices include exposure issues, focus drifts, obstructions, misalignment, download errors, and motion blur. Furthermore, in some cases, in addition to the sub-algorithms for individual problems, one also has to carefully design the overall algorithm and logic to check for and accurately classifying these individual problems. Some of these issues can occur in tandem or have the potential to be confused for each other by automated algorithms. Examples include camera misalignment that can cause some scene elements to go out of focus for wide-area scenes or download errors that can be misinterpreted as an obstruction. Therefore, the sequence in which the sub-algorithms are utilized is also important. This paper presents an overview of these problems along with no-reference and reduced reference image and video quality solutions to detect and classify such faults.
机译:为了确保交通顺畅和公共安全,越来越多的城市和县正在部署用于交通规则(例如红灯,通行费,停车和限速)的照片执法设备。这些通常是无人值守的现场系统,因此定期检查它们是否存在可能会干扰其预期功能的潜在图像/视频质量问题非常重要。人们对使这种检查自动化以减少操作开销和减少人工检查大型相机设备群所涉及的人为错误感兴趣。影响此类相机设备的问题的示例包括曝光问题,焦点偏移,障碍物,未对准,下载错误和运动模糊。此外,在某些情况下,除了针对单个问题的子算法外,还必须仔细设计总体算法和逻辑,以检查并准确地对这些单个问题进行分类。其中一些问题可能会同时发生,也有可能被自动算法相互混淆。例如,相机未对准可能导致某些场景元素在广域场景中失去焦点,或者下载错误可能被误解为障碍物。因此,利用子算法的顺序也很重要。本文概述了这些问题,以及用于检测和分类此类故障的无参考和缩小参考图像和视频质量解决方案。

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