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Toward country scale building detection with convolutional neural network using aerial images

机译:利用航空图像的卷积神经网络实现国家规模建筑物检测

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Establishing up-to-date nationwide building maps is essential to understand urban dynamics, such as estimating population and urban planning and many other applications. However, an efficient and effective solution is yet to be developed. In this paper, for the first time we evaluate three state-of-the-art CNNs for detecting buildings across entire United States using aerial images. The three CNN architectures, fully convolutional neural network, conditional random field as recurrent neural network, and SegNet, support semantic pixel-wise labeling and focus on capturing textural information at multi-scale. We use 1-meter resolution NAIP images as the test data set, and compare the detection results across the three methods. In addition, we propose to combine signed distance function labels with SegNet, which is the preferred CNN architecture identified by our extensive evaluations. The results are further improved in terms of precision, recall rate and the number of building detected. On average, model inference on test images is less than one minute for an area of size ~ 56 km
机译:建立最新的全国性建筑地图对于了解城市动态至关重要,例如估算人口和城市规划以及许多其他应用。但是,尚未开发出有效的解决方案。在本文中,我们首次评估了三种最先进的CNN,它们可以使用航拍图像来检测整个美国的建筑物。三种CNN体系结构,全卷积神经网络,作为循环神经网络的条件随机场和SegNet,均支持语义逐像素标注,并专注于多尺度捕获纹理信息。我们使用分辨率为1米的NAIP图像作为测试数据集,并比较三种方法的检测结果。此外,我们建议将带符号的距离功能标签与SegNet结合起来,SegNet是我们广泛评估确定的首选CNN体系结构。结果在准确性,召回率和检测到的建筑物数量方面得到了进一步改善。平均而言,在约56 km的区域上,对测试图像的模型推断不到一分钟

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