首页> 外文会议>IEEE International Conference on Data Mining Workshops >Learning Spatial Decision Trees for Land Cover Mapping
【24h】

Learning Spatial Decision Trees for Land Cover Mapping

机译:学习土地覆盖映射的空间决策树

获取原文

摘要

Given learning samples from a raster dataset, spatial decision tree learning aims to find a decision tree classifier that minimizes classification errors as well as salt-and-pepper noise. The problem has important societal applications such as land cover classification for natural resource management. However, the problem is challenging due to the fact that learning samples show spatial autocorrelation in class labels, instead of being independently identically distributed. Related work relies on local tests (i.e., testing feature information of a location) and cannot adequately model the spatial autocorrelation effect, resulting in salt-and-pepper noise. In contrast, in my recent papers, we proposed a focal-test-based spatial decision tree (FTSDT), in which the tree traversal direction of a sample is based on both local and focal (neighborhood) information. We introduced a focal test approach with adaptive neighborhoods that avoids oversmoothing in wedge-shaped areas. We also conducted computational refinement on the FTSDT training algorithm by reusing focal values across candidate thresholds. Theoretical analysis shows that the refined training algorithm is correct and more scalable. Experiment results on real world datasets show that new FTSDT with adaptive neighborhoods improves classification accuracy, and that our computational refinement significantly reduces training time.
机译:给定来自栅格数据集的学习样本,空间决策树学习旨在找到决策树分类器,最小化分类错误以及盐和辣椒噪声。问题具有重要的社会应用,如土地覆盖自然资源管理分类。然而,由于学习样本在类标签中显示空间自相关的事实,问题是挑战,而不是独立地分布。相关的工作依赖于本地测试(即,测试某个位置的特征信息),不能充分模拟空间自相关效果,导致盐和辣椒噪声。相比之下,在我最近的论文中,我们提出了一种基于焦点测试的空间决策树(FTSDT),其中示例的树遍历方向基于本地和焦点(邻域)信息。我们介绍了一种具有自适应街区的焦点测试方法,可避免在楔形区域中的过度处理。我们还通过在候选阈值中重用焦点值来对FTSDT培训算法进行计算改进。理论分析表明,精细训练算法是正确的,更可扩展。实验结果对现实世界数据集表明,新的FTSDT与自适应街区提高了分类准确性,并且我们的计算细化明显减少了培训时间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号