一种实用的谱库划分和最小二乘识别策略

Shawn Higbee
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引用次数: 0

摘要

本文提出了一种将大型数据库划分为更小的子分区的方法,这种方法使基于最小二乘的识别过程在数值上表现得更好。以某知名遥感光谱库为例,说明了划分的各种种子策略和分配策略。在示例中,对于这种大小的库,种子策略相对不重要,但是对于点和区间估计,使用基于svd的分区可以显著提高最小二乘性能。还提出了该策略的几个上下文相关变体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A practical strategy for spectral library partitioning and least-squares identification
This paper proposes a method of partitioning large data libraries into smaller sub-partitions, in such a way that a least-squares-based identification process will be numerically better behaved. An example from a well-known remote sensing spectral library is used to illustrate various seed strategies for the partitioning as well as various assignment strategies. In the example shown seed strategy is relatively unimportant for a library of this size, but there is a substantial improvement in least-squares performance with SVD-based partitioning for both point and interval estimates. Several context-dependent variants of this strategy are also proposed.
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