International Journal of Communications, Network and System Sciences
Vol.10 No.08(2017), Article ID:78409,6 pages
10.4236/ijcns.2017.108B028
R(D) Definition Domain Deriving of Limited Distortion Source Coding With Different Sources
Chunhua Zhu, Huan Mi, Mengfei Kan, Yi Song
School of Information Science and Engineering, Henan University of Technology, Zhengzhou, China




Received: July 3, 2017; Accepted: August 11, 2017; Published: August 14, 2017
ABSTRACT
For limited distortion source coding, it is generally considered that the minimum value of the coding average distortion is 0, and the maximum value is the minimum distortion value of making R(D) = 0. This is the definition domain of the information rate distortion function. In this paper, the upper and lower bounds of the information rate distortion function R(D) are derived and computed for the typical sources. The results show that the lower bound of the coding average distortion D is related to the symbol distortion function, which can further improve the theory of limited distortion source coding.
Keywords:
The Information Rate Distortion Function, Limited Distortion Coding, Definition Domain

1. Introduction
From the point of view of information processing, no distortion source coding is entropy preserving. And the entropy preserving coding is not always necessary. Such as the human eyes to accept the visual signal, then there is no need to carry out the distotion-free entropy coding. But entropy preserving coding is not always possible. For example, when the continuous signal is subjected to digital processing, it is impossible to fundamentally remove the quantization error. At this point
. Although the relative entropy of the continuous source is limited, the amount of information is infinite [1]. But the actual channel always has interference, and its capacity is limited, so the distortionless transmission of this continuous information is impossible. Only when certain distortion is allowed, the value of
is finite, and the transmission is possible.
Reducing the rate of information is beneficial to transmission and processing, so it is necessary to perform entropy compression coding. Therefore, it is necessary to introduce the source coding with limited distortion.
is a very important parameter in the source code is the information rate distortion function [2] [3]. In the case of allowing a certain degree of distortion, the rate-distortion function of
the source can be used as a measure of the performance of various compression coding methods. It is generally assumed that the minimum value
of the coding average distortion is 0 and the maximum value
is the minimum distortion value of
, that is the definition field of the
function is
. In fact, in many cases,
is not necessarily zero [4] [5], its value is related to the single symbol distortion function. Only when the distortion matrix has at least one zero element in each row, the average distortion of the source can reach zero. In this paper, the upper and lower bounds of the definition domain of
are deduced, and the upper and lower bounds of the definition domain of
under different source and different distortion function are given. In this way, we can further improve the limitless source coding theorem.
2. The Infer of Domain Definition of the Information Rate Distortion Function 
The information rate distortion function
independent variable
is the average distortion caused by a limited information source coding algorithm. The average distortion allowed is the upper limit of the stipulated average distortion
. The definition domain question of information rate distortion function is that the minimum and maximum values of average distortion
are studied when the information source and the distortion function are known. The value of
must satisfy the fidelity criterion

The average distortion 





2.1. The Defined Domain Lower Bound of Information Rate Distortion Function
The mathematical expectation of nonnegative real numbers 














It can be seen by (3) formula, When each line of the distortion matrix has at least one zero element, the average distortion of the information source can reach the lower bound value, otherwise 


If the formula (4) is established, each line in the distortion matrix has at least one zero, and each column can have at most one zero. Otherwise, 

2.2. The Defined Domain Upper Bound of Information Rate Distortion Function
For the maximum average distortion of the information source





















By Equation (5), 

From the Equation (6) can be observed, In
that minimizes the 




Formula (7) is for different , using the input probability distribution






Thus, the domain of definition 

2.3. Domain of the Different Sources Rate Distortion Function
The information source is n element equal probability distribution, the distortion is Hamming distortion

Then the rate distortion function of the information source is [2]

By the Equation (9), the value of 


For the information source of unequal probability distribution, the several typical information sources are considered, and the corresponding upper bound 

3. Conclusion
In this paper, the upper and lower bounds of the definition domain of the information rate distortion function 

Figure 1. R(D) curve.
Table 1. The upper and the lower bound of typical information source.
pression of the information rate distortion function 







Acknowledgements
This work was funded by National Natural Science Foundation of China―Re- search on no proportion coding cooperative transmission method based on dynamic antenna selection in large scale MIMO systems (61601170) and Henan Provincial Department of science and technology project―Study on wireless channel characteristics of bulk grain reactor (172102210230).
Cite this paper
Zhu, C.H., Mi, H., Kan, M.F. and Song, Y. (2017) R(D) Definition Domain Deriving of Limited Distortion Source Coding With Different Sources. Int. J. Communications, Network and System Sciences, 10, 263-268. https://doi.org/10.4236/ijcns.2017.108B028
References
- 1. Cao, X.-H. and Zhang, Z.-C. (2009) Information Theory and Coding. 2nd Edition, Tsinghua University Press, Beijing.
- 2. Li, Y.-L. and Zhao, J. (2006) Calculation Method of Discrete Source Rate Distortion Function. Water Conservancy Science and Technology and Economy, 12, 564-566.
- 3. Lu, C.-G. (2012) The Relation between GPS Information and Error Lim-ited Information Rate and Information Rate Distortion and Complexity Distortion. Journal of Chengdu University of Infor-mation Technology, 6, 615-622.
- 4. Jiang, S.-F. (2006) Information Rate Distortion Function R(D) Prediction-Correc- tion Calculation Method. Journal of Shanghai University of Electric Power, 2, 187- 191.
- 5. You, X.-X. and Wang, J.-H. (2014) Calculation Method of Information Rate Distortion Function Based on Reverse Test Channel. Journal of Hubei Normal Uni-versity (Natural Science Edition), 4, 12-16.







