%0 Journal Article %T Determining the Number of Coherent/Correlated Sources Using FBSS-based Methods %J Frontiers in Science %@ 2166-6113 %D 2012 %I %R 10.5923/j.fs.20120206.12 %X Determining the number of sources from observed data, is a fundamental problem in array signal processing. In this paper, first we focus on two popular estimators based on information theoretic criteria, AIC and MDL. Then another algorithm based on eigenvalue grads, namely EGM is presented. The computer simulation results prove the effective performance of the EGM for non-coherent signals but in the small differences between the incident angles of non-coherent sources, MDL and AIC have a much better detection performance than EGM. These methods can detect only non-coherent signals, and the performance of them will be sharply declined even signals are coherent and/or correlated. So, first forward/backward spatial smoothing (FBSS) method is used as a pre-processing step to solve the coherency/correlation, and then MDL, AIC and EGM algorithms are run to estimate the number of signals. Numerical results show that FBSS-based EGM offers higher detection probability rather than FBSS-based MDL and AIC in the case of coherent sources as well as correlated ones. Also, the higher detection probability can be achieved for correlated case compared to coherent one. %K Information Theoretic Criteria %K AIC %K MDL %K EGM %K Coherent Signals %K Correlated Signals %K Spatial Smoothing %K FBSS %U http://article.sapub.org/10.5923.j.fs.20120206.12.html