【24h】

A New Lossless Compression Algorithm For Satellite Earth Science Multi-Spectral Imagers

机译:卫星地球科学多光谱成像仪的新无损压缩算法

获取原文
获取原文并翻译 | 示例

摘要

Multispectral imaging is becoming an increasingly important tool for monitoring the earth and its environment from space borne and airborne platforms. Multispectral imaging data consists of visible and IR measurements from a scene across space and spectrum. Growing data rates resulting from faster scanning and finer spatial and spectral resolution makes compression an increasingly critical tool to reduce data volume for transmission and archiving. Examples of multispectral sensors we consider include the NASA 36 band MODIS imager, Meteosat 2nd generation 12 band SEVIRI imager, GOES R series 16 band ABI imager, current generation GOES 5 band imager, and Japan's 5 band MTSAT imager. Conventional lossless compression algorithms are not able to reach satisfactory compression ratios nor are they near the upper limits for lossless compression on imager data as estimated from the Shannon entropy. We introduce a new lossless compression algorithm developed for the NOAA-NESDIS satellite based Earth science multispectral imagers. The algorithm is based on capturing spectral correlations using spectral prediction, and spatial correlations with a linear transform encoder. The algorithm as presented has been designed to work with NOAA's scientific data and so is purely lossless but lossy modes can be supported. The compression algorithm also structures the data in a way that makes it easy to incorporate robust error correction using FEC coding methods as TPC and LDPC for satellite use. This research was funded by NOAA-NESDIS for its Earth observing satellite program and NOAA goals.
机译:多光谱成像正成为一种越来越重要的工具,可以通过星载和机载平台监测地球及其环境。多光谱成像数据由跨越空间和光谱的场景的可见光和IR测量组成。更快的扫描速度以及更精细的空间和光谱分辨率所带来的不断增长的数据速率,使得压缩成为减少传输和归档数据量的日益重要的工具。我们考虑的多光谱传感器示例包括NASA 36波段MODIS成像器,Meteosat第二代12波段SEVIRI成像器,GOES R系列16波段ABI成像器,当前一代的GOES 5波段成像器和日本的5波段MTSAT成像器。常规的无损压缩算法既不能达到令人满意的压缩率,也不能接近香农熵估计的成像器数据无损压缩的上限。我们介绍了针对基于NOAA-NESDIS卫星的地球科学多光谱成像仪开发的新的无损压缩算法。该算法基于使用频谱预测捕获频谱相关性以及使用线性变换编码器进行空间相关性的基础。提出的算法已设计为可与NOAA的科学数据配合使用,因此是纯无损的,但可以支持有损模式。压缩算法还以某种方式构造数据,从而可以轻松地使用FEC编码方法(如用于卫星的TPC和LDPC)合并鲁棒的纠错。这项研究由NOAA-NESDIS资助,用于其地球观测卫星计划和NOAA目标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号