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首页> 外文期刊>Remote Sensing >Road Segmentation of Remotely-Sensed Images Using Deep Convolutional Neural Networks with Landscape Metrics and Conditional Random Fields
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Road Segmentation of Remotely-Sensed Images Using Deep Convolutional Neural Networks with Landscape Metrics and Conditional Random Fields

机译:使用具有景观度量和条件随机场的深度卷积神经网络对遥感图像进行道路分割

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Object segmentation of remotely-sensed aerial (or very-high resolution, VHS) images and satellite (or high-resolution, HR) images, has been applied to many application domains, especially in road extraction in which the segmented objects are served as a mandatory layer in geospatial databases. Several attempts at applying the deep convolutional neural network (DCNN) to extract roads from remote sensing images have been made; however, the accuracy is still limited. In this paper, we present an enhanced DCNN framework specifically tailored for road extraction of remote sensing images by applying landscape metrics (LMs) and conditional random fields (CRFs). To improve the DCNN, a modern activation function called the exponential linear unit (ELU), is employed in our network, resulting in a higher number of, and yet more accurate, extracted roads. To further reduce falsely classified road objects, a solution based on an adoption of LMs is proposed. Finally, to sharpen the extracted roads, a CRF method is added to our framework. The experiments were conducted on Massachusetts road aerial imagery as well as the Thailand Earth Observation System (THEOS) satellite imagery data sets. The results showed that our proposed framework outperformed Segnet, a state-of-the-art object segmentation technique, on any kinds of remote sensing imagery, in most of the cases in terms of precision , recall , and F 1 .
机译:遥感航空(或超高分辨率,VHS)图像和卫星(或高分辨率,HR)图像的对象分割已应用于许多应用领域,尤其是在道路提取中,将分割后的对象用作对象。地理空间数据库中的必需层。在应用深度卷积神经网络(DCNN)从遥感影像中提取道路方面,已经进行了几次尝试。但是,准确性仍然有限。在本文中,我们提出了一种增强的DCNN框架,该框架专门通过应用景观度量(LM)和条件随机场(CRF)专门用于遥感图像的道路提取。为了改善DCNN,我们的网络中采用了一种称为指数线性单位(ELU)的现代激活函数,从而可以提取更多但更准确的道路。为了进一步减少错误分类的道路物体,提出了一种基于LM的解决方案。最后,为锐化提取的道路,将CRF方法添加到我们的框架中。实验是在马萨诸塞州道路航拍影像以及泰国地球观测系统(THEOS)卫星影像数据集上进行的。结果表明,在大多数情况下,就精度,查全率和F 1而言,我们提出的框架在任何种类的遥感影像上均优于Segnet(一种最新的对象分割技术)。

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