Title :
Coding bounded support data with beta distribution
Author :
Ma, Zhanyu ; Leijon, Arne
Author_Institution :
Sound & Image Process. Lab., KTH-R. Inst. of Technoloy, Stockholm, Sweden
Abstract :
The probability density function (PDF) optimized quantization has been shown to be more efficient than the conventional quantization methods. In practical application, the data with bounded support can be modelled better with bounded support distribution (e.g. beta distribution, Dirichlet distribution) and a better quantization performance could be achieved by a more reasonable modelling. In this paper, we study the distortion rate (D-R) performance and the high rate quantization performance of the beta distribution. To implement a quantizer efficiently, a practical quantization scheme is proposed. The proposed scheme takes the advantages of conventional compander and exhaustive training. The advantage of the proposed scheme is verified with both theoretical experiment and practical application.
Keywords :
optimisation; probability; quantisation (signal); rate distortion theory; source coding; D-R performance; PDF optimized quantization; beta distribution; bounded support data; distortion rate theory; probability density function; source coding; Computational modeling; Data models; Entropy; Image coding; Quantization; Switches; Training; beta distribution; bounded support data; high rate quantization; line spectral frequencies; source coding;
Conference_Titel :
Network Infrastructure and Digital Content, 2010 2nd IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-6851-5
DOI :
10.1109/ICNIDC.2010.5657779