首页> 外文会议>Conference on Unattended/Unmanned Ground, Ocean, and Air Sensor Technologies and Applications VI; 20040412-20040415; Orlando,FL; US >Situation Awareness for UAV equipped with Image/Video Understanding System based on network-symbolic models
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Situation Awareness for UAV equipped with Image/Video Understanding System based on network-symbolic models

机译:基于网络符号模型的无人机图像/视频理解系统的态势感知

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Situation awareness is an important factor in the effectiveness of aerial missions. One of the major problems with the UAV is that human operators lack situation awareness. Limited bandwidth does not allow telepresence to a degree, which gives the same level of situation awareness that pilots of regular airplanes have. The best solution would be to equip UAV with a "situation awareness" system that in the real time provides operators with the information necessary for effective mission control and decision making, and allows effective supervisory control of the UAV. Vision in advanced creatures is a component of situation awareness, navigation and planning systems. Fast information processing and decision making requires reduction of informational and computational complexities. The brain achieves this goal using implicit symbolic coding, hierarchical compression, and selective processing of visual information. The Network-Symbolic representation, in which both systematic structural/logical methods and neural/statistical methods are the parts of a single mechanism, converts visual information into relational Network-Symbolic knowledge models, effectively resolving ambiguity and uncertainty in the visual information, and avoiding artificial precise computations of 3-dimensional models. The UAV equipped with such smart vision, will have a situation awareness system that gives operators better control over aircraft and significantly improves surveillance and reconnaissance capabilities.
机译:态势感知是空中飞行任务有效性的重要因素。无人机的主要问题之一是操作人员缺乏态势感知能力。有限的带宽无法达到某种程度的网真状态,从而无法提供与常规飞机飞行员相同的态势感知能力。最好的解决方案是为无人机配备“态势感知”系统,该系统可以实时为操作员提供有效的任务控制和决策所需的信息,并可以对无人机进行有效的监督控制。高级生物的视力是态势感知,导航和计划系统的组成部分。快速的信息处理和决策需要降低信息和计算的复杂性。大脑使用隐式符号编码,分层压缩和视觉信息的选择性处理来实现此目标。网络符号表示法将系统的结构/逻辑方法和神经/统计方法同时作为单一机制的一部分,将视觉信息转换为关系网络符号知识模型,从而有效地解决了视觉信息中的歧义和不确定性,并避免了3维模型的人工精确计算。配备这种智能视觉的无人机将具有一种态势感知系统,使操作员可以更好地控制飞机,并显着提高监视和侦察能力。

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