Title :
Transform coding with integer-to-integer transforms
Author_Institution :
Bell Labs., Lucent Technol., Murray Hill, NJ, USA
fDate :
3/1/2000 12:00:00 AM
Abstract :
A new interpretation of transform coding is developed that downplays quantization and emphasizes entropy coding, allowing a comparison of entropy coding methods with different memory requirements. With conventional transform coding, based on computing Karhunen-Loeve transform coefficients and then quantizing them, vector entropy coding can be replaced by scalar entropy coding without an increase in rate. Thus the transform coding advantage is a reduction in memory requirements for entropy coding. This paper develops a transform coding technique where the source samples are first scalar-quantized and then transformed with an integer-to-integer approximation to a nonorthogonal linear transform. Among the possible advantages is to reduce the memory requirement further than conventional transform coding by using a single common scalar entropy codebook for all components. The analysis shows that for high-rate coding of a Gaussian source, this reduction in memory requirements comes without any degradation of rate-distortion performance
Keywords :
Gaussian processes; entropy codes; rate distortion theory; transform coding; Gaussian source; entropy coding; high-rate coding; integer-to-integer transforms; memory requirements; nonorthogonal linear transform; rate-distortion performance; scalar entropy codebook; transform coding; Degradation; Discrete transforms; Entropy coding; Image coding; Performance analysis; Rate-distortion; Source coding; Transform coding; Vector quantization; Video compression;
Journal_Title :
Information Theory, IEEE Transactions on