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Weakly supervised learning with convolutional neural networks for power line localization

机译:跨越卷积神经网络的电力线路危险学习

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Localization of power lines is important to monitor electricity infrastructures by using unmanned aerial vehicles. Although deep learning is a powerful method to solve computer vision problems, constructing pixel-level ground-truth data for object localization is an exhausting task. This paper proposes a weakly supervised learning algorithm for the localization of power lines by only using image-level class labels. The proposed algorithm classifies sub-regions by using a sliding window and convolutional neural network (CNN). A sub-region is filtered out if it is classified into an image without any power line. If a sub-region is classified into an image with a power line, then its feature maps of intermediate convolutional layers are combined to visualize the location of the power line. Experiments were conducted on actual aerial images to demonstrate the effectiveness of the proposed algorithm.
机译:电力线的定位对于通过使用无人驾驶飞行器来监测电力基础设施的重要性。虽然深度学习是解决计算机视觉问题的强大方法,但构建对象本地化的像素级地面数据是一种令人效力的任务。本文仅使用图像级类标签提出了一种弱监督的电力线路定位的学习算法。所提出的算法通过使用滑动窗口和卷积神经网络(CNN)来对子区域进行分类。如果将子区域被分类为没有任何电力线的图像,则会过滤出滤波。如果子区域被分类为具有电源线的图像,则其特征映射的中间卷积层的图谱组合以可视化电力线的位置。实验在实际的空中图像上进行,以证明所提出的算法的有效性。

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