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Low Altitude Aerial Scene Synthesis Using Generative Adversarial Networks for Autonomous Natural Resource Management

机译:低高度空中场景合成使用生成的对抗网络进行自主自然资源管理

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Deep neural networks are currently the best solution for aerial scene interpretation for Unmanned Aerial Vehicle (UAV) based remote sensing. A problem faced by the deep neural networks is that the deep models require significantly large training datasets which should cover almost all of the scenarios. Gathering these datasets is usually very time consuming and expensive. In this paper, data augmentation and generative adversarial network are used for autonomous synthesis of low altitude aerial scenes for creating a training dataset for deep low altitude aerial video interpretation. The proposed system is evaluated using a real world scenario of road following under foliage in a jungle and the experimental results show that the proposed framework is capable of producing high accuracy training datasets for UAV vision system in natural resource management scenarios.
机译:深度神经网络目前是基于无人机(UAV)的遥感的空中场景解释的最佳解决方案。深度神经网络面临的问题是深度模型需要显着大的培训数据集,这些数据集几乎应该涵盖所有方案。收集这些数据集通常非常耗时和昂贵。本文在本文中,数据增强和生成的对策网络用于为深层低空空中视频解释创建训练数据集的低空鸟场景的自主合成。所提出的系统使用丛林中的树叶下的叶子之后的现实世界的道路进行评估,并实验结果表明,该框架能够在自然资源管理方案中为无人机视觉系统生产高精度训练数据集。

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