Non-Parametric Image Subtraction using
Grey-Level Scattergrams |
P.A.
Bromiley, N.A. Thacker and P. Courtney
Submitted to Image and Vision
Computing BMVC 2000 Special Edition
Image subtraction is used in many areas of machine vision to identify
small changes between equivalent pairs of images. Often only a small
subset of the differences will be of interest. In motion analysis only
those differences caused by motion are important, and differences due to
other sources only serve to complicate interpretation. Simple image
subtraction detects all differences regardless of their source, and is
therefore problematic to use. Superior techniques, analogous to standard
statistical tests, can isolate localised differences due to motion from
global differences due, for example, to illumination changes. Four such
techniques are described. In particular, we introduce a new non-parametric
statistical measure which allows a direct probabilistic interpretation of
image differences. We expect this to be applicable to a wide range of
image formation processes. Its application to medical images is discussed.
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