应用深度神经网络改进无卫星环境下无人机导航

Ricardo Santos, J. Matos-Carvalho, Slavisa Tomic, M. Beko, S. D. Correia
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引用次数: 6

摘要

本文提出了一种基于机器学习的无卫星环境下无人机导航算法。利用广义信任域子问题(GTRS)方法的输出对网络进行训练,然后利用深度长短期记忆(LSTM)模型预测无人机的位置。我们在这里提出了我们的初步发现,表明机器学习工具在感兴趣的问题上具有很高的潜力和实用性。更精确地说,结果显示精度提高,同时符合GTRS方法的执行时间。此外,该方法对噪声的敏感性较低;在实际操作中,这两个因素的结合可以决定无人机是否与障碍物发生碰撞。
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Applying Deep Neural Networks to Improve UAV Navigation in Satellite-less Environments
In this work, a novel algorithm based on machine learning to tackle the navigation problem of Unmanned Aerial Vehicle (UAV) in satellite-less surroundings is presented. The proposed network is trained by exploiting the outputs of a Generalized Trust Region Sub-problem (GTRS) method, after which a deep Long Short-Term Memory (LSTM) model is applied to predict the drone’s position. We present here our preliminary findings which indicate high potential and utility of machine learning tools for the problem of interest. More precisely, the results reveal improved accuracy, while matching the execution time of the GTRS method. Moreover, the proposed method also reveals lower susceptibility to noise; in practice, these two factors combined can be the difference between the UAV colliding with an obstacle or not.
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