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Cairn detection in southern Arabia using a supervised automatic detection algorithm and multiple sample data spectroscopic clustering.

机译:使用监督自动检测算法和多样本数据光谱聚类在阿拉伯南部的凯恩河探测。

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摘要

Excavating cairns in southern Arabia is a way for anthropologists to understand which factors led ancient settlers to transition from a pastoral lifestyle and tribal narrative to the formation of states that exist today. Locating these monuments has traditionally been done in the field, relying on eyewitness reports and costly searches through the arid landscape.;In this thesis, an algorithm for automatically detecting cairns in satellite imagery is presented. The algorithm uses a set of filters in a window based approach to eliminate background pixels and other objects that do not look like cairns. The resulting set of detected objects constitutes fewer than 0.001% of the pixels in the satellite image, and contains the objects that look the most like cairns in imagery. When a training set of cairns is available, a further reduction of this set of objects can take place, along with a likelihood-based ranking system.;To aid in cairn detection, the satellite image is also clustered to determine land-form classes that tend to be consistent with the presence of cairns. Due to the large number of pixels in the image, a subsample spectral clustering algorithm called "Multiple Sample Data Spectroscopic clustering" is used. This multiple sample clustering procedure is motivated by perturbation studies on single sample spectral algorithms. The studies, presented in this thesis, show that sampling variability in the single sample approach can cause an unsatisfactory level of instability in clustering results. The multiple sample data spectroscopic clustering algorithm is intended to stabilize this perturbation by combining information from different samples. While sampling variability is still present, the use of multiple samples mitigates its effect on cluster results.;Finally, a step-through of the cairn detection algorithm and satellite image clustering are given for an image in the Hadramawt region of Yemen. The top ranked detected objects are presented, and a discussion of parameter selection and future work follows.
机译:在阿拉伯南部挖掘凯恩斯是人类学家了解导致古代定居者从牧民生活方式和部落叙事过渡到今天形成的国家的因素的一种方式。传统上,这些遗迹的定位是在野外进行的,这要依靠目击者的报告并在干旱的土地上进行昂贵的搜索。;本文提出了一种在卫星图像中自动检测石棺的算法。该算法在基于窗口的方法中使用了一组过滤器,以消除背景像素和其他看起来不像凯恩斯的物体。所得的一组检测到的对象构成了卫星图像中少于0.001%的像素,并且包含看起来最像图像中的凯恩斯的对象。当有一组凯恩斯训练集可用时,可以进一步减少这组对象以及基于似然度的排名系统。为了帮助进行凯恩斯检测,还对卫星图像进行聚类以确定地形类型,往往与凯恩斯的存在是一致的。由于图像中的像素数量很大,因此使用了称为“多样本数据光谱聚类”的子样本光谱聚类算法。这种多样本聚类过程是由对单个样本频谱算法的扰动研究推动的。本文提出的研究表明,单样本方法中的样本变异性可能会导致聚类结果的不稳定性达到令人满意的水平。多样本数据光谱聚类算法旨在通过组合来自不同样本的信息来稳定这种干扰。虽然仍然存在采样变异性,但使用多个样本会减轻其对聚类结果的影响。最后,针对也门哈德拉毛特地区的图像,给出了石标检测算法和卫星图像聚类的逐步介绍。给出了排名最高的检测到的对象,然后讨论了参数选择和将来的工作。

著录项

  • 作者

    Schuetter, Jared Michael.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Statistics.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 236 p.
  • 总页数 236
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:37:24

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