您的位置: 专家智库 > >

国家自然科学基金(s40930532)

作品数:1 被引量:1H指数:1
发文基金:国家自然科学基金更多>>
相关领域:自动化与计算机技术更多>>

文献类型

  • 1篇中文期刊文章

领域

  • 1篇自动化与计算...

主题

  • 1篇NMF
  • 1篇PART
  • 1篇CEM
  • 1篇S-
  • 1篇MORPHO...
  • 1篇HYPER-...

传媒

  • 1篇Geo-Sp...

年份

  • 1篇2010
1 条 记 录,以下是 1-1
排序方式:
High-resolution Hyper-spectral Image Classification with Parts-based Feature and Morphology Profile in Urban Area被引量:1
2010年
High-resolution hyper-spectral image (HHR) provides both detailed structural and spectral information for urban study. However, due to the inherent correlation between spectral bands and within-class variability in the data, the data processing of HHR is a challenging work. In this paper, based on spectral mixture analysis theory, a new stack of parts description features were extracted, and then incorporated with a stack of morphology based spatial features. Partially supervised constrained energy minimization (CEM) and unsupervised nonnegative matrix factorization (NMF) were used to extract the part-features. The joint features were then integrated by SVM classifier. The advantages of this method are the representation of physical composition of the urban area by the parts-features and the show of multi-scale structure information by morphology profiles. Experiments with an airborne hyper-spectral data flightline over the Washington DC Mall were performed, and the performance of the proposed algorithm was evaluated in comparison with well-known nonparametric weighted feature extraction (NWFE) and feature selection method. The results shown that the proposed features-joint scheme consistently outperforms the traditional methods, and so can provide an effective option for processing HHR data in urban area.
HUANG Yuancheng ZHANG Liangpei LI Pingxiang ZHONG Yanfei
关键词:CEMNMF
共1页<1>
聚类工具0