Title :
Error exponents for distributed detection of Markov sources
Author :
Shalaby, Hossam M H ; Papamarcou, Adrian
Author_Institution :
Dept. of Electr. Eng., Maryland Univ., College Park, MD, USA
fDate :
3/1/1994 12:00:00 AM
Abstract :
The paper considers a binary hypothesis testing system in which two sensors simultaneously observe a discrete-time finite-valued stationary ergodic Markov source and transmit M-ary messages to a Neyman-Pearson central detector. The size M of the message alphabet increases at most subexponentially with the number of observations. The asymptotic behavior of the type II error rate is investigated as the number of observations increases to infinity, and the associated error exponent is obtained under mild assumptions on the source distributions. This exponent is independent of the test level ε and the actual codebook sizes M, is achieved by a universally optimal sequence of acceptance regions, and is characterized by an infimum of informational divergence rate over a class of infinite-dimensional distributions. Important differences-due to the observations being Markov-between the asymptotically optimal distributed tests and their nondistributed counterparts are highlighted. The converse results require a blowing-up lemma for stationary ergodic Markov sources, which is also proven
Keywords :
Markov processes; encoding; error statistics; signal detection; testing; M-ary messages; Markov sources; Neyman-Pearson central detector; acceptance regions; asymptotic behavior; asymptotically optimal distributed tests; binary hypothesis testing system; blowing-up lemma; discrete-time finite-valued stationary ergodic Markov source; distributed detection; error exponent; infinite-dimensional distributions; informational divergence rate; message alphabet; stationary ergodic Markov sources; type II error rate; universally optimal sequence; Books; Data compression; Detectors; Error analysis; Error probability; H infinity control; Remote sensing; Sensor systems; Statistics; System testing;
Journal_Title :
Information Theory, IEEE Transactions on