Title :
Reduced-Rank MDL Method for Source Enumeration in High-Resolution Array Processing
Author :
Huang, Lei ; Wu, Shunjun ; Li, Xia
Author_Institution :
Shenzhen Univ., Shenzhen
Abstract :
This paper proposes a reduced-rank minimum description length (MDL) method to enumerate the incident waves impinging on a uniform linear array (ULA). First, a new observation data and a reference signal are formed from sensor data by means of the shift-invariance property of the ULA. A cross-correlation between them is calculated, which is able to capture signal information and efficiently suppress additive noise. Second, the normalized cross-correlation is used as initial information for a recursion procedure to quickly partition the observation data into two orthogonal components in a signal subspace and a reduced-rank noise subspace. The components in the noise subspace are employed to calculate the total code length that is required to encode the observation data. Finally, the model with the shortest code length, namely the minimum description length, is chosen as the best model. Unlike the traditional MDL methods, this method partitions the observation data into the cleaner signal and noise subspace components by means of the recursion procedure, avoiding the estimation of a covariance matrix and its eigendecomposition. Thus, the method has the advantage of computational simplicity. Its performance is demonstrated via numerical results.
Keywords :
Wiener filters; array signal processing; signal resolution; Wiener filter; additive noise; cross-correlation; high-resolution array processing; incident waves; reduced-rank minimum description length; reduced-rank noise subspace; reference signal; sensor array signal processing; shift-invariance property; signal enumeration; signal subspace; source enumeration; uniform linear array; Direction-of-arrival (DOA); Wiener filter; eigenvalue decomposition (EVD); high resolution; minimum description length (MDL); multistage Wiener filter (MSWF); reduced rank; sensor array signal processing; signal enumeration;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2007.899344