Speaker: Richard Allred
Title: Wavelet Transform Domain Filters: A Spatially Selective Noise Filtration Technique
Yansun Xu, John B. Weaver, Dennis M. Healy, Jr., and Jian Lu
IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 3, NO. 6, NOVEMBER 1994
Abstract:
Wavelet transforms are multiresolution decompositions that
can be used to analyze signals and images. They describe a
signal by the power at each scale and position. Edges can be
located very effectively in the wavelet transform domain. A
spatially selective noise filtration technique based on the
direct spatial correlation of the wavelet transform at
several adjacent scales is introduced. A high correlation is
used to infer that there is a significant feature at the
position that should be passed through the filter. The
authors have tested the technique on simulated signals,
phantom images, and real MR images. It is found that the
technique can reduce noise contents in signals and images by
more than 80% while maintaining at least 80% of the value of
the gradient at most edges. The authors did not observe any
Gibbs' ringing or significant resolution loss on the
filtered images. Artifacts that arose from the filtration
are very small and local. The noise filtration technique is
quite robust. There are many possible extensions of the
technique. The authors see its applications in spatially
dependent noise filtration, edge detection and enhancement,
image restoration, and motion artifact removal. They have
compared the performance of the technique to that of the
Weiner filter and found it to be superior.