Title of article :
Wavelet transform methods for object detection and recovery
Author/Authors :
Strickland، نويسنده , , R.N.، نويسنده , , He Il Hahn، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1997
Abstract :
We show that a biorthogonal spline wavelet
closely approximates the prewhitening matched filter for
detecting Gaussian objects in Markov noise. The filterbank
implementation of the wavelet transform acts as a hierarchy of
such detectors operating at discrete object scales. If the object
to be detected is Gaussian and its scale happens to coincide
with one of those computed by the wavelet transform, and if
the background noise is truly Markov, then optimum detection
is realized by thresholding the appropriate subband image. In
reality, the Gaussian may be a rather coarse approximation
of the object, and the background noise may deviate from the
Markov assumption. In this case, we may view the wavelet
decomposition as a means for computing an orthogonal feature
set for input to a classifier. We use a supervised linear classifier
applied to feature vectors comprised of samples taken from
the subbands of an N-octave, undecimated wavelet transform.
The resulting map of test statistic values indicates the presence
and location of objects. The object itself is reconstructed
by using the test statistic to emphasize wavelet subbands,
followed by computing the inverse wavelet transform. We
show two contrasting applications of the wavelets-based object
recovery algorithm. For detecting microcalcifications in digitized
mammograms, the object and noise models closely match the
real image data, and the multiscale matched filter paradigm
is highly appropriate. The second application, extracting ship
outlines in noisy forward-looking infrared images, is presented
as a case where good results are achieved despite the data models
being less well matched to the assumptions of the algorithm.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING