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Smart Unattended Sensor Networks with Scene Understanding Capabilities

机译:具有场景理解功能的智能无人值守传感器网络

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Unattended sensor systems are new technologies that are supposed to provide enhanced situation awareness to military and law enforcement agencies. A network of such sensors cannot be very effective in field conditions only if it can transmit visual information to human operators or alert them on motion. In the real field conditions, events may happen in many nodes of a network simultaneously. But the real number of control personnel is always limited, and attention of human operators can be simply attracted to particular network nodes, while more dangerous threat may be unnoticed at the same time in the other nodes. Sensor networks would be more effective if equipped with a system that is similar to human vision in its abilities to understand visual information. Human vision uses for that a rough but wide peripheral system that tracks motions and regions of interests, narrow but precise foveal vision that analyzes and recognizes objects in the center of selected region of interest, and visual intelligence that provides scene and object contexts and resolves ambiguity and uncertainty in the visual information. Biologically-inspired Network-Symbolic models convert image information into an "understandable" Network-Symbolic format, which is similar to relational knowledge models. The equivalent of interaction between peripheral and foveal systems in the network-symbolic system is achieved via interaction between Visual and Object Buffers and the top-level knowledge system.
机译:无人值守的传感器系统是新技术,应该为军事和执法机构提供增强的态势感知能力。仅当这种传感器网络可以将视觉信息传输给操作员或在操作时向他们发出警报时,在现场条件下才能发挥非常有效的作用。在实际条件下,事件可能同时在网络的许多节点中发生。但是,控制人员的实际数量总是有限的,并且可以简单地将操作员的注意力吸引到特定的网络节点上,而同时在其他节点中可能不会注意到更危险的威胁。如果配备的网络与人类视觉在理解视觉信息方面的能力相似,则传感器网络将更加有效。人类视觉为此使用了一个粗略而宽泛的外围系统,该系统跟踪运动和感兴趣区域,狭窄但精确的中央凹视觉,用于分析和识别所选感兴趣区域中心的物体,以及视觉智能,该视觉智能提供场景和物体上下文并解决歧义和视觉信息的不确定性。受生物启发的网络符号模型将图像信息转换为“可理解的”网络符号格式,类似于关系知识模型。网络符号系统中外围系统与中央凹系统之间的等效交互是通过可视缓冲区与对象缓冲区与顶级知识系统之间的交互来实现的。

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