Compression of Spectral Meteorological I

نویسنده

  • Kristo Miettinen
چکیده

Data compression is essential to current low-earth-orbit spectral sensors with global coverage, e.g. meteorological sensors. Such sensors routinely produce in excess of 30 Gb of data per orbit ( over 4 Mb/s for about 110 min. ) while typically limited to less than 10 Gb of downlink capacity per orbit ( 15 minutes at 10 Mb/s ). Astro-Space Division develops spaceborne compression systems for compression ratios from as little as three to as much as twenty-twne for high--fidelity reconstructions. Current hardware production and development at AstrMpace Division focuses on discrete cosine transform ( DCT ) systems implemented with the GE PFFT chip, a 32x32 2D-DCT engine. Spectral relations in the data are exploited through block mean extraction followed by orthonormal transformation. The transformation produces blocks with spatial correlation that axe suitable for further compression with any block-oriented spatial compression system, e.g. AsthoSpace Division's Laplacian modeler and analytic encoder of DCT coefficients.

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تاریخ انتشار 2009