Title of article
Locally monotonic diffusion
Author/Authors
Acton، نويسنده , , S.T.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2000
Pages
11
From page
1379
To page
1389
Abstract
Anisotropic diffusion affords an efficient, adaptive
signal smoothing technique that can be used for signal enhancement,
signal segmentation, and signal scale-space creation. This
paper introduces a novel partial differential equation (PDE)-based
diffusion method for generating locally monotonic signals. Unlike
previous diffusion techniques that diverge or converge to trivial signals,
locally monotonic (LOMO) diffusion converges rapidly to welldefined
LOMO signals of the desired degree. The property of local
monotonicity allows both slow and rapid signal transitions (ramp
and step edges) while excluding outliers due to noise. In contrast
with other diffusion methods, LOMO diffusion does not require
an additional regularization step to process a noisy signal and uses
no ad hoc thresholds or parameters. In the paper, we develop the
LOMO diffusion technique and provide several salient properties,
including stability and a characterization of the root signals. The
convergence of the algorithm is well behaved (nonoscillatory) and
is independent of signal length, in contrast with the median filter. A
special case of LOMO diffusion is identical to the optimal solution
achieved via regression. Experimental results validate the claim
that LOMO diffusion can produce denoised LOMO signals with
low error using less computation than the median-order statistic
approach.
Keywords
partial differential equations , Anisotropic Diffusion , scale space , signal enhancement.
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Serial Year
2000
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Record number
403251
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