Title :
Effects of multiple-pass filtering in lossless predictive compression of waveform data
Author :
Ives, Robert W. ; Magotra, Neeraj ; Stearns, Samuel D.
Author_Institution :
Dept. of Electr. Eng., U.S. Naval Acad., Annapolis, MD, USA
fDate :
11/1/2002 12:00:00 AM
Abstract :
Presents the effects of the predictive filtering of waveform data in multiple passes as the first stage of a two-stage lossless compression algorithm. Predictive compression has a proven track record when applied to high dynamic range waveform data, wherein the waveform data are input to a linear predictor or perhaps an adaptive predictor for decorrelation, and the resultant residue is then subjected to an entropy coder to (ideally) represent the signal with a minimum number of bits. This compression is commonly applied with no loss of information. In this work, an adaptive filter is used for prediction, but instead of a single run through the predictor, the residue is continually passed back through the predictor in an attempt to further decorrelate the residue. Multiple passes of a gradient adaptive lattice filter has given the best decorrelation, yielding improved compression ratios. We run the compression technique on a seismic database, then provide some comparative lossless compression results using several coding schemes and show that using multiple-pass predictive filtering can improve the compression rates attainable.
Keywords :
data compression; filtering theory; geophysical signal processing; seismology; adaptive filter; adaptive signal processing; coding schemes; data compression technique; decorrelation; entropy coder; gradient adaptive lattice filter; lossless predictive compression; multiple-pass filtering; multiple-pass predictive filtering; predictive filtering; predictor; seismic database; seismic waveform data; two-stage lossless compression algorithm; Adaptive filters; Data compression; Decorrelation; Dynamic range; Event detection; Filtering; Signal processing; Signal processing algorithms; Statistics; Wiener filter;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2002.805081