...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Integration of spatial-spectral information for the improved extraction of endmembers
【24h】

Integration of spatial-spectral information for the improved extraction of endmembers

机译:整合空间光谱信息以改进端成员的提取

获取原文
获取原文并翻译 | 示例

摘要

Spectral-based image endmember extraction methods hinge on the ability to discriminate between pixels based on spectral characteristics alone. Endmembers with distinct spectral features (high spectral contrast) are easy to select, whereas those with minimal unique spectral information (low spectral contrast) are more problematic. Spectral contrast, however, is dependent on the endmember assemblage, such that as the assemblage changes so does the "relative" spectral contrast of each endmember to all other endmembers. It is then possible for an endmember to have low spectral contrast with respect to the full image, but have high spectral contrast within a subset of the image. The spatial-spectral endmember extraction tool (SSEE) works by analyzing a scene in parts (subsets), such that we increase the spectral contrast of low contrast endmembers, thus improving the potential for these endmembers to be selected. The SSEE method comprises three main steps: 1) application of singular value decomposition (SVD) to determine a set of basis vectors that describe most of the spectral variance for subsets of the image; 2) projection of the full image data set onto the locally defined basis vectors to determine a set of candidate endmember pixels; and, 3) imposing spatial constraints for averaging spectrally similar endmembers, allowing for separation of endmembers that are spectrally similar, but spatially independent. The SSEE method is applied to two real hyperspectral data sets to demonstrate the effects of imposing spatial constraints on the selection of endmembers. The results show that the SSEE method is an effective approach to extracting image endmembers. Specific improvements include the extraction of physically meaningful, low contrast endmembers that occupy unique image regions. (c) 2007 Elsevier Inc. All rights reserved.
机译:基于光谱的图像端成员提取方法取决于仅基于光谱特征来区分像素的能力。具有独特光谱特征(高光谱对比度)的端成员易于选择,而具有独特光谱信息最少(低光谱对比度)的端成员则存在更多问题。然而,光谱对比度取决于端构件的组装,使得随着组装的改变,每个端构件与所有其他端构件的“相对”光谱对比度也改变。这样,端构件相对于整个图像可能具有较低的光谱对比度,但是在图像的子集内具有较高的光谱对比度。空间光谱最终成员提取工具(SSEE)通过分析零件(子集)中的场景来工作,从而我们提高了低对比度最终成员的光谱对比度,从而提高了选择这些最终成员的潜力。 SSEE方法包括三个主要步骤:1)应用奇异值分解(SVD)确定一组基本矢量,这些矢量描述了图像子集的大部分光谱方差; 2)将整个图像数据集投影到局部定义的基向量上,以确定一组候选端成员像素; 3)施加空间约束,以平均频谱相似的末端成员,从而允许分离频谱相似但空间独立的末端成员。将SSEE方法应用于两个实际的高光谱数据集,以证明在选择末端成员时施加空间约束的效果。结果表明,SSEE方法是一种提取图像端元的有效方法。具体的改进包括提取在物理上有意义的,低对比度的末端成员,这些末端成员占据了唯一的图像区域。 (c)2007 Elsevier Inc.保留所有权利。

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