Colour Image Segmentation by
Non-Parametric Density Estimation in Feature Space |
P.A. Bromiley, N.A. Thacker and P. Courtney
Proc. BMVC 2001, Manchester, 2001
A novel colour image segmentation routine, based on clustering pixels in
colour space using non-parametric density estimation, is described.
Although the basic methodology is well known, several important
improvements to the previous work in this area are introduced. The density
is estimated at a series of knot points in the colour space, and
clustering is performed by hill climbing on this density function. The
hill climbing is constrained such that no step crosses an intermediate
Voronoid cell, ensuring that all salient clusters are detected. Most
importantly, the problem of scale selection has been addressed using a
statistically motivated approach, by placing the knot points according to
an estimate of the noise in the original images, taking full account of
error propagation in the algorithm. The algorithm has been evaluated both
on synthetic data and in the context of its application in a machine
vision system, specifically the calibration of velocity estimates
extracted from a novel infrared sensor used in a fall detector. The
application of the technique to medical images and texture recognition is
also discussed.
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