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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Power Line Recognition From Aerial Images With Deep Learning
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Power Line Recognition From Aerial Images With Deep Learning

机译:通过深度学习从航空影像中识别电源线

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摘要

Avoidance of power lines is an important issue of flight safety. Assistance systems that automatically detect power lines can prevent accidents caused by pilot unawareness. In this study, we propose using convolutional neural networks (CNN) to recognize the presence of power lines in aerial images. Deep CNN architectures such as VGG and ResNet are originally designed to recognize objects in the ImageNet dataset. We show that they are also successful at extracting features that indicate the presence of power lines, which appear as simple, yet subtle structures. Another interesting finding is that pretraining the CNN with the ImageNet dataset improves power line recognition rate significantly. This indicates that the usage of ImageNet pretraining should not be limited to high-level visual tasks, as it also develops general-purpose visual skills that apply to more primitive tasks. To test the proposed methods' performance, we collected an aerial dataset and made it publicly available. We experimented with training CNNs in an end-to-end fashion, along with extracting features from the intermediate stages of CNNs and feeding them to various classifiers. These experiments were repeated with different architectures and preprocessing methods, resulting in an expansive account of best practices for the usage of CNNs for power line recognition.
机译:避免使用电源线是飞行安全的重要问题。自动检测电力线的辅助系统可以防止飞行员不了解而导致事故。在这项研究中,我们建议使用卷积神经网络(CNN)来识别航拍图像中电源线的存在。诸如VGG和ResNet之类的深层CNN架构最初旨在识别ImageNet数据集中的对象。我们表明,它们在提取表明电源线存在的特征方面也很成功,这些特征显示为简单但微妙的结构。另一个有趣的发现是,使用ImageNet数据集对CNN进行预训练可以显着提高电力线识别率。这表明ImageNet预培训的使用不应仅限于高级视觉任务,因为它还会开发适用于更原始任务的通用视觉技能。为了测试所提出方法的性能,我们收集了一个航空数据集并将其公开提供。我们以端对端的方式对CNN进行了训练,并从CNN的中间阶段提取了特征并将其输入到各种分类器中。使用不同的体系结构和预处理方法重复了这些实验,从而扩大了使用CNN进行电力线识别的最佳实践。

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