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DOI | 10.1117/12.328105 |
An efficient interactive agglomerative hierarchical clustering algorithm for hyperspectral image processing | |
Rahman, SA | |
通讯作者 | Rahman, SA |
会议名称 | Conference on Imaging Spectrometry IV |
会议日期 | JUL 20-21, 1998 |
会议地点 | SAN DIEGO, CA |
英文摘要 | Traditional hierarchical clustering algorithms require the calculation of a dissimilarity matrix which is mapped to a binary tree or 'dendogram' based upon some predetermined criterion. Although 'optimally efficient' algorithms requiring O(N-2) time and O(N) storage are known for several clustering methods, with few exceptions these algorithms are relatively inefficient in practice as many pairwise distances are measured which are not necessary for generation of the binary tree. We describe here a novel 'almost single link' algorithm which is efficient both theoretically and in practice, and which can be extended to provide fast (albeit suboptimal) algorithms for centroid, median and single link clustering of large data sets. Generalisation to other related clustering methods is expected to be straightforward. Our algorithm also suggests a fairly efficient method for generating minimal spanning trees. In performing the segmentation we employ a particular representation of the binary tree which simplifies the task of manual investigation of the hierarchy. A customised graphical user interface including a two-dimensional scatter plot, a visual display of the dendogram, and a false colour image with overlayed clusters makes the clustering procedure a highly interactive one. By suggesting, for each of the clustering methods, possible criteria which might be useful for extracting relevant clusters from the tree information, we are able to fully automate the cluster selection procedure and thereby further reduce the effort required to segment an image. The algorithms described have been transcribed into C code and combined into a single package, the "Hierarchical Agglomerative Clusterer" (HAC), which has been applied to the analysis of hyperspectral image data of various forest and desert scenes acquired by the HYDICE sensor. The analyses were performed on a 266 Mhz Pentium PC platform running Windows NT 4.0. Typical segmentation times for the fastest algorithm ranged from 17 seconds for a 15232-pixel image to 2833 seconds for a 209840-pixel image, each pixel representing a 210-band spectrum. These initial studies suggest that the HAC package will provide a sound framework for making detailed comparisons of the effects of different clustering algorithms or dissimilarity measures. Its overall speed makes it a promising tool not only for hyperspectral image processing applications but for multivariate data analysis as a whole. |
英文关键词 | cluster analysis hierarchical clustering algorithm single link method minimal spanning tree hyperspectral image processing HYDICE sensor |
来源出版物 | IMAGING SPECTROMETRY IV |
ISSN | 0277-786X |
出版年 | 1998 |
卷号 | 3438 |
页码 | 210-221 |
ISBN | 0-8194-2893-0 |
出版者 | SPIE-INT SOC OPTICAL ENGINEERING |
类型 | Proceedings Paper |
语种 | 英语 |
国家 | USA |
收录类别 | CPCI-S |
WOS记录号 | WOS:000077137900022 |
WOS类目 | Remote Sensing ; Optics |
WOS研究方向 | Remote Sensing ; Optics |
资源类型 | 会议论文 |
条目标识符 | http://119.78.100.177/qdio/handle/2XILL650/292258 |
作者单位 | (1)Raytheon Opt Syst Inc, Algorithm Dev & Data Proc, Danbury, CT 06810 USA |
推荐引用方式 GB/T 7714 | Rahman, SA. An efficient interactive agglomerative hierarchical clustering algorithm for hyperspectral image processing[C]:SPIE-INT SOC OPTICAL ENGINEERING,1998:210-221. |
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