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Use of Gestalt Theory and Random Sets for Automatic Detection of Linear Geological Features

机译:使用格式塔理论和随机集自动检测线性地质特征

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This paper presents the calibration and application of a Gestalt-based line segment method for automatic geological lineament detection from remote sensing images. This method involves estimation of the scale factor, the angle tolerance and a threshold on the false alarm rate. It identifies major lineaments as objects characterized by two edges on the image, which appear as transitions from dark to bright and vice versa. These objects were modelled as random sets with parameters drawn from their distributions. Following the geometry of detected segments, a novel validation method assesses the accuracy with respect to a linear vector reference. The methodology was applied to a study area in Kenya where lineaments are prominent in the landscape and are well identifiable from an ASTER image. Error rates were based on distance and local orientation, and the study showed that the existence and size of the objects were sensitive to parameter variation. False detection rate and missing detection rate were both equal to 0.50, which is better than values equal to 0.65 and 0.63, observed using the Canny edge detection. Modelling the uncertainty of geological lineaments with random sets further showed that no core set is formed, indicating that there is an inherent uncertainty in their existence and position, and that the variance is relatively high. Comparing the test area with four areas in the same region showed similar results. Despite some shortcomings in identifying full lineaments from partially observed lineaments, it is concluded that the procedure in this paper is well able to automatically extract lineaments from a remote sensing image and validate their existence.
机译:本文介绍了一种基于格式塔的线段方法在遥感影像中自动进行地质界线检测的标定方法和应用。该方法涉及比例因子,角度公差和虚警率阈值的估计。它将主要线条识别为以图像上两个边缘为特征的对象,这些边缘表现为从暗到亮的过渡,反之亦然。这些对象被建模为随机集,并具有从其分布中提取的参数。根据检测到的段的几何形状,一种新颖的验证方法可以评估相对于线性矢量参考的准确性。将该方法应用于肯尼亚的研究区域,该区域的景观中线条明显,并且可以通过ASTER图像很好地识别。错误率基于距离和局部方向,研究表明对象的存在和大小对参数变化敏感。错误检测率和丢失检测率均等于0.50,比使用Canny边缘检测法观察到的等于0.65和0.63的值要好。用随机集对地质界线的不确定性进行建模进一步表明,没有形成岩心集,表明它们的存在和位置存在固有的不确定性,并且方差相对较高。将测试区域与相同区域中的四个区域进行比较,结果相似。尽管在从部分观察到的线条中识别完整线条方面存在一些缺陷,但是可以得出结论,本文中的过程很好地能够从遥感图像中自动提取线条并验证它们的存在。

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