A non-parametric clustering scheme for landsat

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摘要

A 4-dimensional histogram is computed to reduce the large LANDSAT pixel data (up to 7.6 million pixels to a frame) to the much smaller number (6,000) of distinct vectors and their frequency of occurrence in the scene. The vectors are clustered by a recent non-parametric clustering algorithm(3) using the histogram count as a probability density estimate. The resultant clusters are unimodal m the 4-dimensional histogram and can possess arbitrary shapes. The algorithm is non-iterative and does not require specification of the number of clusters a priori.Hashing is used to generate the histogram and also subsequent table look-up classification of the individual pixels in the image after the histogram vectors are clustered. The resultant clustering scheme is very efficient and a 512 × 512 LANDSAT scene can be clustered in less than 2 min of CPU time on a PDP-10 computer. Results of the application of the clustering scheme on representative LANDSAT scenes are included.

论文关键词:Cluster analysis,LANDSAT,Non-parametric,Lookup table,Pattern recognition,Histogram,Graph theoretic

论文评审过程:Received 16 March 1977, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(77)90005-X