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Corporatization of Expressway Construction and Operation Management

机译:高速公路建设与运营管理的公司化

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Unmanned aerial vehicle (UAV) measurement accuracy is limited, a single sensor is difficult to obtain accurate information on various states, in order to achieve autonomous unmanned aerial vehicle anti-collision function and perform related tasks. The development of fast unmanned aerial vehicle sensor fusion approach has been one of the key unmanned aerial vehicle areas of anti-collision. In this paper, taking unmanned aerial vehicle flying height parameter as an example, it proposes an unmanned aerial vehicle sensor fusion method based on neural network and consistency fusion. First it uses consistency fusion method for unmanned aerial vehicle height effectively sensor information fusion to obtain fusion results, Second, it uses BP neural network to complete the pitch angle of the information fusion, achieve unmanned aerial vehicle sensor fusion performance. By a certain type of unmanned aerial vehicle real data verification, it shows that the method can improve the accuracy of gaining information and has certain engineering application value.
机译:无人机(UAV)的测量精度有限,单个传感器难以获得各种状态的准确信息,以实现自主的无人机防撞功能并执行相关任务。快速无人机传感器融合方法的发展一直是无人机抗碰撞的关键领域之一。本文以无人机飞行高度参数为例,提出了一种基于神经网络和一致性融合的无人机传感器融合方法。首先采用一致性融合方法对无人机高度传感器信息进行有效融合,获得融合结果;其次,利用BP神经网络完成信息融合的俯仰角,达到无人机传感器融合的性能。通过某种类型的无人机真实数据验证,表明该方法可以提高信息获取的准确性,具有一定的工程应用价值。

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