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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Cauchy Graph Embedding Optimization for Built-Up Areas Detection From High-Resolution Remote Sensing Images
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Cauchy Graph Embedding Optimization for Built-Up Areas Detection From High-Resolution Remote Sensing Images

机译:柯西图嵌入优化用于高分辨率遥感影像的建筑物区域检测

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Automatic built-up areas detection from remote sensing images has attracted considerable research interest, due to its crucial roles in various applications. As far as built-up areas detection, the corner density map to predict the presence of the built-up areas has been widely adopted, but the calculation is generally time-consuming. In addition, the density map is just segmented by a statistical threshold, resulting in that the accurate boundaries of the built-up areas are unachievable. In order to address these issues, this paper proposes a novel built-up areas detection approach. Instead of pixel units, our approach takes the superpixel-based image partitions as the primary calculation units, which benefits to improve the computational efficiency and visual organization performance. Based on the superpixel-based units, this paper first proposes a sparse corner voting method for accelerating the production of corner density map. Then, Cauchy graph embedding optimization is presented to cope with the problem of segmenting the density map, which can preserve the well-defined boundaries of built-up areas. A diverse and representative test set including 2.1-m resolution ZY3 imagery, 2.0-m resolution GF1 imagery, 1.0-m resolution IKONOS imagery, and 0.61-m resolution QUICKBIRD imagery is collected. Experimental results on these test images show that our proposed approach is robust to sensor and resolution variation, and can outperform state-of-the-art approaches remarkably.
机译:由于其在各种应用中的关键作用,因此从遥感图像中自动检测建筑区域引起了相当大的研究兴趣。就建筑物区域的检测而言,用于预测建筑物区域的存在的拐角密度图已被广泛采用,但是计算通常很耗时。此外,密度图仅按统计阈值进行分段,导致无法实现堆积区域的准确边界。为了解决这些问题,本文提出了一种新颖的建筑物区域检测方法。我们的方法代替像素单位,而是将基于超像素的图像分区作为主要计算单位,这有利于提高计算效率和视觉组织性能。基于超像素单元,本文首先提出了一种稀疏的角点投票方法,以加速角点密度图的生成。然后,提出了柯西图嵌入优化方法来解决密度图分割的问题,该图可以保留建筑物区域的明确边界。收集了包括2.1米分辨率ZY3图像,2.0米分辨率GF1图像,1.0米分辨率IKONOS图像和0.61米分辨率QUICKBIRD图像在内的各种代表性测试集。在这些测试图像上的实验结果表明,我们提出的方法对传感器和分辨率变化具有鲁棒性,并且可以显着优于最新方法。

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