Rajib Lochan DasMrityunjoy Chakraborty
In this paper, a new convergence analysis is presented for a well-known sparse adaptive filter family, namely, the proportionate-type normalized least mean square (PtNLMS) algorithms, where, unlike all the existing approaches, no assumption of whiteness is made on the input. The analysis relies on a "transform" domain based model of the PtNLMS algorithms and brings out certain new convergence features not reported earlier. In particular, it establishes the universality of the steady-state excess mean square error formula derived earlier under white input assumption. In addition, it brings out a new relation between the mean square deviation of each tap weight and the corresponding gain factor used in the PtNLMS algorithm.
Kevin WagnerMiloš Doroslovački
Ligang LiuMasahiro FukumotoSachio Saiki
Kevin WagnerMiloš Doroslovački
Mariana dos S. VieitosMichel Pompeu TcheouDiego B. HaddadMaurício Dias