Fast Autocorrelated Context Models for Data Compression
A method is presented to automatically generate context models of data by calculating the data's autocorrelation function. The largest values of the autocorrelation function occur at the offsets or lags in the bitstream which tend to be the most highly correlated to any particular location. The...
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Zusammenfassung: | A method is presented to automatically generate context models of data by
calculating the data's autocorrelation function. The largest values of the
autocorrelation function occur at the offsets or lags in the bitstream which
tend to be the most highly correlated to any particular location. These offsets
are ideal for use in predictive coding, such as predictive partial match (PPM)
or context-mixing algorithms for data compression, making such algorithms more
efficient and more general by reducing or eliminating the need for ad-hoc
models based on particular types of data. Instead of using the definition of
the autocorrelation function, which considers the pairwise correlations of data
requiring O(n^2) time, the Weiner-Khinchin theorem is applied, quickly
obtaining the autocorrelation as the inverse Fast Fourier transform of the
data's power spectrum in O(n log n) time, making the technique practical for
the compression of large data objects. The method is shown to produce the
highest levels of performance obtained to date on a lossless image compression
benchmark. |
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DOI: | 10.48550/arxiv.1305.5486 |