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Progressively Growing Generative Adversarial Networks for High Resolution Semantic Segmentation of Satellite Images

机译:逐步发展的生成对抗网络用于卫星图像的高分辨率语义分割

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Machine learning has proven to be useful in classification and segmentation of images. In this paper, we evaluate a training methodology for pixel-wise segmentation on high resolution satellite images using progressive growing of generative adversarial networks. We apply our model to segmenting building rooftops and compare these results to conventional methods for rooftop segmentation. We present our findings using the SpaceNet version 2dataset. Progressive GAN training achieved a test accuracy of 93% compared to 89% for traditional GAN training.
机译:机器学习已被证明对图像的分类和分割很有用。在本文中,我们评估了使用生成对抗性网络的逐步增长对高分辨率卫星图像进行像素分割的训练方法。我们将模型应用于建筑物屋顶的分割,并将这些结果与传统的屋顶分割方法进行比较。我们使用SpaceNet版本2数据集介绍我们的发现。与传统GAN训练的89%相比,渐进式GAN训练达到了93%的测试准确性。

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