1 research outputs found

    Restricted qq-Isometry Properties Adapted to Frames for Nonconvex lql_q-Analysis

    Full text link
    This paper discusses reconstruction of signals from few measurements in the situation that signals are sparse or approximately sparse in terms of a general frame via the lql_q-analysis optimization with 0<q≀10<q\leq 1. We first introduce a notion of restricted qq-isometry property (qq-RIP) adapted to a dictionary, which is a natural extension of the standard qq-RIP, and establish a generalized qq-RIP condition for approximate reconstruction of signals via the lql_q-analysis optimization. We then determine how many random, Gaussian measurements are needed for the condition to hold with high probability. The resulting sufficient condition is met by fewer measurements for smaller qq than when q=1q=1. The introduced generalized qq-RIP is also useful in compressed data separation. In compressed data separation, one considers the problem of reconstruction of signals' distinct subcomponents, which are (approximately) sparse in morphologically different dictionaries, from few measurements. With the notion of generalized qq-RIP, we show that under an usual assumption that the dictionaries satisfy a mutual coherence condition, the lql_q split analysis with 0<q≀10<q\leq1 can approximately reconstruct the distinct components from fewer random Gaussian measurements with small qq than when q=1q=1Comment: 40 pages, 1 figure, under revision for a journa
    corecore