ZHENG Jingjing, FANG Jinyun, HAN Chengde. Progressive Transmission Method of DEM Data Based on JPEG2000 Lossless-Compression[J]. Geomatics and Information Science of Wuhan University, 2009, 34(4): 395-399.
Citation: ZHENG Jingjing, FANG Jinyun, HAN Chengde. Progressive Transmission Method of DEM Data Based on JPEG2000 Lossless-Compression[J]. Geomatics and Information Science of Wuhan University, 2009, 34(4): 395-399.

Progressive Transmission Method of DEM Data Based on JPEG2000 Lossless-Compression

Funds: 国家973计划资助项目(2004CB318202)
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  • Received Date: January 17, 2009
  • Revised Date: January 17, 2009
  • Published Date: April 04, 2009
  • According to the DEM data characteristics and the application needs of DEM network progressive transmission,a new progressive transmission method of DEM data based the improved JPEG2000 lossless-compression is presented.With this method,the accuracy of DEM data's accuracy in each resolution can be hold perfectly and the data can be compressed effectively and progressively.The 2/6 integer-to-integer wavelet basis is used to decompose DEM data.Using the precincts progressive compression method and the index file of the compressed code stream,the progressive transmission of DEM data is realized.It is proved that the original terrain characteristics are better maintained at different resolutions compared to the standard 5/3 wavelet basis.The transmitting data bytes are decreased to 90.29% compared to that of the traditional method in network progressive transmitting.
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