Title :
Generalized distributive law for ML decoding of STBCs
Author :
Natarajan, Lakshmi Prasad ; Srinath, K. Pavan ; Rajan, B. Sundar
Author_Institution :
Dept. of ECE, Indian Inst. of Sci., Bangalore, India
Abstract :
The Generalized Distributive Law (GDL) is a message passing algorithm which can efficiently solve a certain class of computational problems, and includes as special cases the Viterbi´s algorithm, the BCJR algorithm, the Fast-Fourier Transform, Turbo and LDPC decoding algorithms. In this paper GDL based maximum-likelihood (ML) decoding of Space-Time Block Codes (STBCs) is introduced and a sufficient condition for an STBC to admit low GDL decoding complexity is given. Fast-decoding and multigroup decoding are the two algorithms used in the literature to ML decode STBCs with low complexity. An algorithm which exploits the advantages of both these two is called Conditional ML (CML) decoding. It is shown in this paper that the GDL decoding complexity of any STBC is upper bounded by its CML decoding complexity, and that there exist codes for which the GDL complexity is strictly less than the CML complexity. Explicit examples of two such families of STBCs is given in this paper. Thus the CML is in general suboptimal in reducing the ML decoding complexity of a code, and one should design codes with low GDL complexity rather than low CML complexity.
Keywords :
MIMO communication; maximum likelihood decoding; message passing; space-time block codes; GDL based maximum-likelihood decoding; ML decoding; STBC; conditional maximum-likelihood decoding; generalized distributive law; message passing algorithm; space-time block codes; Block codes; Complexity theory; Ethics; Junctions; Maximum likelihood decoding;
Conference_Titel :
Information Theory Workshop (ITW), 2011 IEEE
Conference_Location :
Paraty
Print_ISBN :
978-1-4577-0438-3
DOI :
10.1109/ITW.2011.6089356