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Unsupervised Detection of Built-Up Areas From Multiple High-Resolution Remote Sensing Images

机译:从多个高分辨率遥感影像中无监督地检测建筑区域

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摘要

Given a set of high-resolution remote sensing images covering different scenes, we propose an unsupervised approach to simultaneously detect possible built-up areas from them. The motivation behind is that the frequently recurring appearance patterns or repeated textures corresponding to common objects of interest (e.g., built-up areas) in the input image data set can help us discriminate built-up areas from others. With this inspiration, our method consists of two steps. First, we extract a large set of corners from each input image by an improved Harris corner detector. Afterward, we incorporate the extracted corners into a likelihood function to locate candidate regions in each input image. Given a set of candidate build-up regions, in the second stage, we formulate the problem of build-up area detection as an unsupervised grouping problem. The candidate regions are modeled through texture histogram, and the grouping problem is solved by spectrum clustering and graph cuts. Experimental results show that the proposed approach outperforms the existing algorithms in terms of detection accuracy.
机译:给定一组覆盖不同场景的高分辨率遥感图像,我们提出了一种无监督方法来同时检测其中的可能堆积区域。其背后的动机是,与输入图像数据集中的常见感兴趣对象(例如,堆积区域)相对应的频繁出现的外观图案或重复纹理可以帮助我们将堆积区域与其他区域区分开。有了这个灵感,我们的方法包括两个步骤。首先,我们使用改进的哈里斯拐角检测器从每个输入图像中提取大量拐角。之后,我们将提取的角合并到似然函数中,以在每个输入图像中定位候选区域。给定一组候选堆积区域,在第二阶段,我们将堆积区域检测问题公式化为无监督分组问题。通过纹理直方图对候选区域进行建模,并通过频谱聚类和图割来解决分组问题。实验结果表明,该方法在检测精度上优于现有算法。

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