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Recent progress in wide-area surveillance: protecting our pipeline infrastructure

机译:广域监视的最新进展:保护我们的管道基础设施

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The pipeline industry has millions of miles of pipes buried along the length and breadth of the country. Since none of the areas through which pipelines run are to be used for other activities, it needs to be monitored so as to know whether the right-of-way (RoW) of the pipeline is encroached upon at any point in time. Rapid advances made in the area of sensor technology have enabled the use of high end video acquisition systems to monitor the RoW of pipelines. The images captured by aerial data acquisition systems are affected by a host of factors that include light sources, camera characteristics, geometric positions and environmental conditions. We present a multistage framework for the analysis of aerial imagery for automatic detection and identification of machinery threats along the pipeline RoW which would be capable of taking into account the constraints that come with aerial imagery such as low resolution, lower frame rate, large variations in illumination, motion blurs, etc. The proposed framework is described from three directions. In the first part of the framework, a method is developed to eliminate regions from imagery that are not considered to be a threat to the pipeline. This method makes use of monogenic phase features into a cascade of pre-trained classifiers to eliminate unwanted regions. The second part of the framework is a part-based object detection model for searching specific targets which are considered as threat objects. The third part of the framework is to assess the severity of the threats to pipelines in terms of computing the geolocation and the temperature information of the threat objects. The proposed scheme is tested on the real-world dataset that were captured along the pipeline RoW.
机译:管道行业沿该国的长度和广度埋有数百万英里的管道。由于没有将管道穿过的区域用于其他活动,因此需要对其进行监视,以了解在任何时间点是否都侵犯了管道的通行权。传感器技术领域的快速进步使得高端视频采集系统的使用可以监控管道的行进速度。航空数据采集系统捕获的图像受许多因素的影响,这些因素包括光源,相机特性,几何位置和环境条件。我们提出了一个用于航空影像分析的多阶段框架,用于自动检测和识别沿管线RoW的机械威胁,这将能够考虑航空影像所带来的限制,例如分辨率低,帧频低,变化大。照明,运动模糊等。从三个方向描述了所提出的框架。在框架的第一部分中,开发了一种方法来消除图像中不被视为对管道构成威胁的区域。该方法将单基因相特征应用到级联的预训练分类器中,以消除不需要的区域。框架的第二部分是基于部分的对象检测模型,用于搜索被视为威胁对象的特定目标。该框架的第三部分是通过计算威胁对象的地理位置和温度信息来评估对管道威胁的严重性。在沿管线RoW捕获的现实世界数据集上测试了所提出的方案。

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