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A Deep Learning Approach to Detecting Changes in Buildings from Aerial Images

机译:一种深入的学习方法,可以检测空中图像建筑物的变化

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Detecting building changes via aerial images acquired at different times is important in the urban planning and geographic information updating. Deep learning solutions have high potential in improving detection performance as compared with traditional methods. However, existing methods usually carry out detection for whole images. Non-building interferences involved may result in an increase of false alarm rate, a decrease in accuracy rate, and a heavy computational load. In addition, they mostly utilize supervised deep learning networks dependent highly on massive labeled samples. In this study, we present an unsupervised deep learning solution with detection only on segmented building areas. We first employ a masking technique based on building segmentation to remove non-building interferences. We then use a classification model combing an unsupervised deep learning network PCANet and linear SVM to realize building change detection. Experimental results show that our method achieves 34.96% higher accuracy rate, 45.18% lower missed detection rate, 37.92% lower false alarm rate, and 50.12% lesser computational time than the whole-image detection method without building segmentation.
机译:通过在不同时间获取的空中图像检测建筑变化在城市规划和地理信息更新中是重要的。与传统方法相比,深度学习解决方案具有提高检测性能的高潜力。然而,现有方法通常对整个图像进行检测。所涉及的非建筑干扰可能导致误报率的增加,精度降低,以及重量的计算负荷。此外,它们主要利用受监管的深度学习网络,这些网络高度依赖于大规模标记的样本。在这项研究中,我们介绍了一个无人监督的深度学习解决方案,只有在分段建筑区域的检测。我们首先采用基于建筑分割的掩蔽技术,以去除非建筑干扰。然后,我们使用分类模型梳理无监督的深度学习网络PCANet和线性SVM来实现构建变化检测。实验结果表明,我们的方法达到了34.96%的准确率高,未错过的检测率降低45.18%,误报率降低37.92%,计算时间小于整个图像检测方法而没有构建分割。

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