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Inter-annual stability of land cover classification: Explorations and improvements.

机译:土地覆被分类的年际稳定性:探索和改进。

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摘要

Land cover information is a key input to many earth system models, and thus accurate and consistent land cover maps are critically important to global change science. However, existing global land cover products show unrealistically high levels of year- to-year change. This thesis explores methods to improve accuracies for global land cover classifications, with a focus on reducing spurious year-to-year variation in results derived from MODIS data. In the first part of this thesis I use clustering to identify spectrally distinct sub-groupings within defined land cover classes, and assess the spectral separability of the resulting sub-classes. Many of the sub-classes are difficult to separate due to a high degree of overlap in spectral space.;In the second part of this thesis, I examine two methods to reduce year-to-year variation in classification labels. First, I evaluate a technique to construct training data for a per-pixel supervised classification algorithm by combining multiple years of spectral measurements. The resulting classifier achieves higher accuracy and lower levels of year-to-year change than a reference classifier trained using a single year of data. Second, I use a spatio-temporal Markov Random Field (MRF) model to post-process the predictions of a per-pixel classifier. The MRF framework reduces spurious label change to a level comparable to that achieved by a post-hoc heuristic stabilization technique. The timing of label change in the MRF processed maps better matched disturbance events in a reference data, whereas the heuristic stabilization results in label changes that lag several years behind disturbance events.
机译:土地覆盖信息是许多地球系统模型的关键输入,因此准确一致的土地覆盖图对于全球变化科学至关重要。但是,现有的全球土地覆盖产品年复一年地呈现出不切实际的高水平变化。本文探讨了提高全球土地覆盖分类准确性的方法,重点是减少从MODIS数据得出的结果中虚假的逐年变化。在本文的第一部分中,我使用聚类法来识别定义的土地覆盖类别内光谱上不同的子类别,并评估所得子类别的光谱可分离性。由于光谱空间的高度重叠,许多子类很难分离。在本文的第二部分中,我研究了两种减少分类标签中逐年变化的方法。首先,我评估了一种通过结合多年的光谱测量来构建针对每个像素的监督分类算法的训练数据的技术。与使用单年数据训练的参考分类器相比,所得分类器实现了更高的准确性和更低的逐年变化水平。其次,我使用时空马尔可夫随机场(MRF)模型对每个像素分类器的预测进行后处理。 MRF框架将伪造标签更改减少到与事后启发式稳定技术所能达到的水平相当的水平。在经过MRF处理的地图中,标签更改的时间点会在参考数据中更好地匹配干扰事件,而启发式稳定会导致标签更改滞后于干扰事件数年。

著录项

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Remote Sensing.;Geodesy.;Geography.
  • 学位 M.A.
  • 年度 2014
  • 页码 113 p.
  • 总页数 113
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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