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Automated Detection of Sand Dunes on Mars

机译:自动检测火星上的沙丘

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Abstract. In this paper we show that the detection of dune fields on images of the surface of Mars, however varied they are, can be achieved through the application of an automated methodology. The procedure is based on the extraction of local information from images after they are organized according to a regular grid which defines cells, in turn aggregated into larger regions (blocks) that constitute the detection units. A set of gradient features is extracted and tested with Boosting and Support Vector Machine classifiers. A detection rate of 98.7% was obtained for a 5-fold cross validation on a set of images captured by the Mars Orbital Camera on board the Mars Global Surveyor probe.
机译:抽象的。在本文中,我们表明,可以通过应用自动化方法来检测火星表面图像上的沙丘场,无论它们如何变化。该过程基于图像的局部信息提取,这些图像是根据规则网格定义的,这些规则网格定义了单元格,然后将它们聚合为构成检测单元的较大区域(块)。使用Boosting和Support Vector Machine分类器提取一组梯度特征并进行测试。在Mars Global Surveyor探测器上的火星轨道相机拍摄的一组图像上进行5倍交叉验证时,检出率为98.7%。

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