首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Kernel low-rank representation with elastic net for China coastal wetland land cover classification using GF-5 hyperspectral imagery
【24h】

Kernel low-rank representation with elastic net for China coastal wetland land cover classification using GF-5 hyperspectral imagery

机译:使用GF-5高光谱图像的中国沿海湿地陆地覆盖架的核低秩表示,利用中国沿海湿地覆盖分类

获取原文
获取原文并翻译 | 示例
           

摘要

Wetland contains various ground objects with high spectral similarity. How to accurately distinguish complex classes has become a challenge in wetland land cover classification. In this paper, low-rank representation with elastic net (ENLRR) and the kernel version of ENLRR (KENLRR) are proposed for coastal wetland land cover classification by using Gaofen-5 (GF-5) hyperspectral data of China. The main idea of ENLRR is to combine elastic net with low-rank representation, which replaces rank function with the combination of nuclear norm and Frobenius norm when constraining the coefficient matrix. The KENLRR method considers nonlinear characteristics of hyperspectral data, where a neighborhood filter (NF) kernel function is adopted to map the original data space into a higher dimensional feature space for better classification. In the experiments, three typical coastal wetlands in China: Yellow River Delta, Jiangsu Dafeng Natural Reserve, and Yangtze River Delta (Nantong) are adopted, and the proposed methods and seven comparison methods are used to conduct wetland land cover classification. The experimental results demonstrate that the proposed ENLRR and KENLRR are effective in accurately distinguishing wetland ground objects and reliably mapping their distribution. More specifically, the KENLRR method can provide the best performance, and the OAs are 96.63%, 96.76% and 87.67% for the three wetlands, respectively. The land cover distributions and spatial patterns of the three wetlands are studied as well. Yellow River Delta is a typical estuarine wetland with abundant landscapes, Dafeng Nature Reserve is a coastal wetland with the block regular feature distribution in spatial, and Yangtze River Delta (Nantong) mainly includes river and flood plain, whose ecological environment is deeply affected by human activities.
机译:湿地包含具有高光谱相似性的各种地面对象。如何准确区分复杂的课程已成为湿地陆地覆盖分类的挑战。本文采用了通过使用中国高光谱数据的沿海湿地陆地覆盖分类,提出了利用弹性网(EnsRR)和EncRR(KENLRR)的低秩表示。 EnarRR的主要思想是将弹性网与低秩表示结合,其在约束系数矩阵时替换核规范和Frobenius规范的组合。 KENLRR方法考虑高光谱数据的非线性特性,其中采用邻域滤波器(NF)内核函数来将原始数据空间映射到更高的维度特征空间以获得更好的分类。在实验中,中国三个典型的沿海湿地:江苏大丰自然保护区和长江三角洲(南通)采用,建议的方法和七种比较方法进行湿地陆地覆盖分类。实验结果表明,所提出的EncRR和KENLRR在准确区分湿地地面物体和可靠地绘制其分布方面是有效的。更具体地,KENLRR方法可以提供最佳性能,而OAS分别为三湿地的96.63%,96.76%和87.67%。研究了三种湿地的土地覆盖分布和空间模式。黄河三角洲是一个典型的河口湿地,丰富的景观丰富的景观,Dafeeng自然保护区是一个沿海湿地,空间的街区常规功能分销,长江三角洲(南通)主要包括河流和洪泛平原,其生态环境受到人类的深受影响活动。

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