Online Sparse System Identification and Signal Reconstruction Using Projections Onto Weighted ell1 Balls
نویسندگان
چکیده
This paper presents a novel projection-based adaptive algorithm for sparse signal and system identification. The sequentially observed data are used to generate an equivalent sequence of closed convex sets, namely hyperslabs. Each hyperslab is the geometric equivalent of a cost criterion, that quantifies “data mismatch”. Sparsity is imposed by the introduction of appropriately designed weighted l1 balls. The algorithm develops around projections onto the sequence of the generated hyperslabs as well as the weighted l1 balls. The resulting scheme exhibits linear dependence, with respect to the unknown system’s order, on the number of multiplications/additions and an O(L log 2 L) dependence on sorting operations, where L is the length of the system/signal to be estimated. Numerical results are also given to validate the performance of the proposed method against the LASSO algorithm and two very recently developed adaptive sparse LMS and LS-type of adaptive algorithms, which are considered to belong to the same algorithmic family.
منابع مشابه
Online Sparse System Identification and Signal Reconstruction using Projections onto Weighted ℓ1 Balls
This paper presents a novel projection-based adaptive algorithm for sparse signal and system identification. The sequentially observed data are used to generate an equivalent sequence of closed convex sets, namely hyperslabs. Each hyperslab is the geometric equivalent of a cost criterion, that quantifies “data mismatch”. Sparsity is imposed by the introduction of appropriately designed weighted...
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ورودعنوان ژورنال:
- IEEE Trans. Signal Processing
دوره 59 شماره
صفحات -
تاریخ انتشار 2011