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Computer vision-assisted human-in-the-loop measurements: augmenting qualitative by increasing quantitative analytics for CI situational awareness

机译:计算机视觉辅助的在环人体测量:通过增加定量分析的CI情境意识来增强定性

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Many infrastructure problems are reported by the public, yet this can result in human-in-the loop, qualitative measurements and lead to slow response times as quantitative data is needed. Cameras already exist in many settings such as smartphones, or moving objects such as UAV-mounted cameras. Since many critical infrastructure (CI) problems often are first noticed by the general public and then reported, their qualitative descriptions can then be accompanied with quantitative measurements by using the indirect measurement of parameters provided using machine vision. In this paper, the authors propose a framework using Agile IoT to add new modalities to already existing sensors (cameras) such as smartphone devices to determine additional parameters using machine vision. This can result in an increase in situational awareness, and meanwhile, response and repair times can decrease, then the overall infrastructure resilience increases. This has the potential to improve preventative maintenance and increase resilience by increasing situational awareness, so resources can be deployed quickly and efficiently where they are needed. This proposed framework can apply to multiple small infrastructure such as lighting standards, playground structures, signage, access gates and fences, electrical wires, and utility poles and its affixed hardware components. The paper shows a proof-of-concept application of this methodology to the concept of tilt detection, with lean determined from simulated and field images. Quick follow-up to problems at appropriate locations can increase system resilience by quickly enabling solving the problem.
机译:公众报告了许多基础设施问题,但是这可能导致人为循环,定性测量,并且由于需要定量数据而导致响应时间变慢。相机已经存在于许多设置中,例如智能手机或移动物体(例如安装在无人机上的相机)。由于许多关键基础设施(CI)问题通常通常首先被公众注意到,然后进行报告,因此可以通过使用机器视觉提供的参数的间接测量来对它们的定性描述进行定量测量。在本文中,作者提出了一个框架,该框架使用敏捷物联网向现有的传感器(相机)(如智能手机设备)添加新的模式,以使用机器视觉确定其他参数。这可以提高态势感知能力,同时可以减少响应和维修时间,然后提高整体基础架构的弹性。这有可能通过提高态势感知来改善预防性维护并提高弹性,因此可以在需要的地方快速有效地部署资源。提议的框架可以应用于多个小型基础设施,例如照明标准,游乐场结构,标牌,检修门和围栏,电线,电线杆及其固定的硬件组件。本文展示了这种方法在倾斜检测概念上的概念验证应用,倾斜是根据模拟和实地图像确定的。通过在适当位置快速解决问题,可以快速解决问题,从而提高系统弹性。

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