Wavelet-domain hidden Markov models (HMMs), in particular the hidden Markov
tree (HMT) model, have recently been introduced and applied to signal and
image processing, e.g., signal denoising. In this paper, we develop a simpl
e initialization scheme for the efficient HMT model training and then propo
se a new four-state HMT model called HMT-2. We find that the new initializa
tion scheme fits the HMT-2 model well. Experimental results show that the p
erformance of signal denoising using the HMT-2 model is often improved over
the two-state HMT model developed by Crouse et al.