of the digitally-based (as opposed to film-based) picture archiving and communications systems (PACS). One of This paper reports a multispectral segmented differential pulse coded modulation (MSDPCM) method for well registered the biggest bottlenecks in this process is the extremely multispectral ma
Multispectral image compression using eigenregion-based segmentation
β Scribed by Lena Chang
- Publisher
- Elsevier Science
- Year
- 2004
- Tongue
- English
- Weight
- 832 KB
- Volume
- 37
- Category
- Article
- ISSN
- 0031-3203
No coin nor oath required. For personal study only.
β¦ Synopsis
In the study, a novel segmentation technique is proposed for multispectral satellite image compression. A segmentation decision rule composed of the principal eigenvectors of the image correlation matrix is derived to determine the similarity of image characteristics of two image blocks. Based on the decision rule, we develop an eigenregion-based segmentation technique. The proposed segmentation technique can divide the original image into some proper eigenregions according to their local terrain characteristics. To achieve better compression e ciency, each eigenregion image is then compressed by an e cient compression algorithm eigenregion-based eigensubspace transform (ER-EST). The ER-EST contains 1D eigensubspace transform (EST) and 2D-DCT to decorrelate the data in spectral and spatial domains. Before performing EST, the dimension of transformation matrix of EST is estimated by an information criterion. In this way, the eigenregion image may be approximated by a lower-dimensional components in the eigensubspace. Simulation tests performed on SPOT and Landsat TM images have demonstrated that the proposed compression scheme is suitable for multispectral satellite image.
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