Using Total Probability in Image Template
Matching
Haval Sadeq
College of Engineering, Salahaddin University-Erbil, Erbil-Iraq
Abstract: Image template matching is a main task in
photogrammetry and computer vision. The matching can be used to automatically
determine the 3D coordinates of a point. A firstborn image matching method in
fields of photogrammetry and computer vision is area-based matching, which is
based on correlation measuring that uses normalised cross-correlation. However,
this method fails at a discontinuous edge and at the area of low illumination
or at geometric distortion because of changes in imaging location. Thus, these
points are considered outliers. The proposed method measures correlations,
which is based on normalised cross-correlation, at each point by using various
sizes of window and then considering the probability of correlations for each
window. Thereafter, the determined probability values are integrated. On the
basis of a specific threshold value, the point of maximum total probability
correlation is recognised as a corresponding point. The algorithm is applied to
aerial images for Digital Surface Model (DSM) generation. Results show that the
corresponding points are identified successfully at different locations,
especially at a discontinuous point, and that a Digital Surface Model of high
resolution is generated.
Keywords: Digital surface model, template image
matching, normalised cross-correlation, probability.