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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Semi Automatic Road Extraction by Fusion of High Resolution Optical and Radar Images
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Semi Automatic Road Extraction by Fusion of High Resolution Optical and Radar Images

机译:融合高分辨率光学图像和雷达图像的半自动道路提取

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摘要

Two new methods for fusion of high-resolution optical and radar satellite images have been proposed to extract roads in high quality in this paper. Two fusion methods, including neural network and knowledge-based fusion are introduced. The first proposed method consists of two stages: (i) separate road detection using each dataset and (ii) fusion of the results obtained using a neural network. In this method, the neural networks are separately applied on high-resolution IKONOS and TerraSAR-X images for road detection, using a variety of texture parameters. The outputs of two neural networks, as well as the spectral features of optical image, are used in a third neural network as inputs. The second method is a knowledge-based fusion using thresholds of narrow roads and vegetation gray levels. First roads are extracted from each source separately. The outputs are then compared and advantages and disadvantages of each data source are investigated . The results obtained from accuracy assessment show the efficiency of the proposed methods. Furthermore, the comparison of the results showed the superiority of the first algorithm.
机译:本文提出了两种融合高分辨率光学和雷达卫星图像的新方法来提取高质量的道路。介绍了两种融合方法,包括神经网络和基于知识的融合。第一个提出的方法包括两个阶段:(i)使用每个数据集进行单独的道路检测,以及(ii)使用神经网络对结果进行融合。在这种方法中,使用各种纹理参数将神经网络分别应用于高分辨率IKONOS和TerraSAR-X图像以进行道路检测。两个神经网络的输出以及光学图像的光谱特征在第三个神经网络中用作输入。第二种方法是使用狭窄道路和植被灰度阈值的基于知识的融合。分别从每个来源提取第一条道路。然后比较输出,并研究每个数据源的优缺点。从准确性评估中获得的结果表明了所提方法的有效性。此外,结果的比较表明了第一种算法的优越性。

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