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SeeCoast: Persistent Surveillance and Automated Scene Understanding for Ports and Coastal Areas

机译:Seecoast:对港口和沿海地区的持续监测和自动化场景理解

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SeeCoast is a prototype US Coast Guard port and coastal area surveillance system that aims to reduce operator workload while maintaining optimal domain awareness by shifting their focus from having to detect events to being able to analyze and act upon the knowledge derived from automatically detected anomalous activities. The automated scene understanding capability provided by the baseline SeeCoast system (as currently installed at the Joint Harbor Operations Center at Hampton Roads, VA) results from the integration of several components. Machine vision technology processes the real-time video streams provided by USCG cameras to generate vessel track and classification (based on vessel length) information. A multi-INT fusion component generates a single, coherent track picture by combining information available from the video processor with that from surface surveillance radars and AIS reports. Based on this track picture, vessel activity is analyzed by SeeCoast to detect user-defined unsafe, illegal, and threatening vessel activities using a rule-based pattern recognizer and to detect anomalous vessel activities on the basis of automatically learned behavior normalcy models. Operators can optionally guide the learning system in the form of examples and counter-examples of activities of interest, and refine the performance of the learning system by confirming alerts or indicating examples of false alarms. The fused track picture also provides a basis for automated control and tasking of cameras to detect vessels in motion. Real-time visualization combining the products of all SeeCoast components in a common operating picture is provided by a thin web-based client.
机译:Seecoast是一个原型美国海岸警卫队港口和沿海地区监控系统,旨在减少操作员工作负载,同时通过转移他们的焦点来维持最佳的领域意识,因为他们无法检测到能够分析和行动自动检测到的异常活动的知识。自动化场景了解基线Seecoast系统提供的能力(如当前安装在汉普顿道路,VA的联合港口运营中心)产生了多个组件的集成。机器视觉技术处理USCG摄像机提供的实时视频流,以生成船舶轨道和分类(基于血管长度)信息。多int融合组分通过将来自视频处理器的信息与从表面监控雷达和AIS报告组合来生成单个相干的曲目图像。基于该轨道图像,Seecoast分析了船舶活动,以使用基于规则的模式识别器来检测用户定义的不安全,非法和威胁船舶活动,并在自动学习行为正常模型的基础上检测异常血管活动。操作员可以选择以利益活动的示例和反击示例指导学习系统,并通过确认警报或指示误报的示例来优化学习系统的性能。融合轨道图像还为摄像机检测血管的自动控制和任务提供了基础。将所有Seecoast组件的产品组合在公共操作图片中的所有Seecoast组件的实时可视化由薄的基于Web的客户提供。

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