首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >Large scale hyperspectral data segmentation by random spatial subspace clustering
【24h】

Large scale hyperspectral data segmentation by random spatial subspace clustering

机译:随机空间子空间聚类的大规模高光谱数据分割

获取原文

摘要

A novel method called spatial subspace clustering (SpatSC) for 1D hyperspectral data segmentation problem, e.g. hyperspectral data taken from a drill hole, exploring spatial information has been proposed in [1]. The purpose of this exercise is to improve interpretability of the hyperspectral data. The spatial subspace clustering has two major components in its formulation, i.e. data self reconstruction and fused lasso. The first component is mainly to separate different subspaces where data lie on or close to, while the second is to exploit the spatial smoothness based on the observation of stratification of rocks. It produces interpretable and consistent clusters by utilizing the spatial information. However, the implementation of SpatSC requires an optimization of N2 variables, where N is the number of samples in the data set. When N is large, for example, tens of thousands for a typical drill hole data set, the algorithm is no longer suitable for personal computers. To alleviate the computational intensity, we propose to run SpatSC on a randomly chosen calibration set from crude spatial clustering, which is only a small proportion of the whole data set. The final clustering result is then propagated combining the crude spatial clustering and SpatSC results on calibration set. By doing so, the computation cost is reduced by an order of two magnitude compare to the original SpatSC. We applied this random spatial subspace clustering algorithm on real thermal infrared drill hole data set to show its effectiveness.
机译:一维高光谱数据分割问题的一种称为空间子空间聚类(SpatSC)的新颖方法,例如在文献[1]中提出了从钻孔获取的高光谱数据,用于探索空间信息。本练习的目的是提高高光谱数据的可解释性。空间子空间聚类在其表述中具有两个主要组成部分,即数据自重构和融合套索。第一个组件主要是分离数据位于或接近的不同子空间,第二个组件是基于对岩石分层的观察来开发空间平滑度。它利用空间信息产生可解释且一致的聚类。但是,SpatSC的实现需要对N 2 变量进行优化,其中N是数据集中的样本数。当N大(例如,对于典型的钻孔数据集为数万个)时,该算法不再适用于个人计算机。为了减轻计算强度,我们建议在从原始空间聚类中随机选择的校准集上运行SpatSC,该校准集仅占整个数据集的一小部分。然后将最终的聚类结果与原始空间聚类和SpatSC结果结合在校准集上进行传播。这样,与原始SpatSC相比,计算成本降低了两个数量级。我们将这种随机空间子空间聚类算法应用于真实的热红外钻孔数据集,以显示其有效性。

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