The recognition of shapes in images using Pairwise Geometric Histograms has previously been confined to fixed scale shape. Although the geometric representation used in this algorithm is not scale invariant, the stable behaviour of the similarity metric as shapes are scaled enables the method to be extended to the recognition of shapes over a range of scale. In this paper the necessary additions to the existing algorithm are described and the technique is demonstrated on real image data. Hypotheses generated by matching scene shape data to models have previously been resolved using the generalised Hough transform. The robustness of this method can be attributed to its approximation of maximum likelihood statistics. To further improve the robustness of the recognition algorithm and to improve the accuracy to which an objects location, orientation and scale can be determined the generalised Hough transform has been replaced by the probabilistic Hough transform.
[1]
Richard S. Stephens,et al.
Probabilistic approach to the Hough transform
,
1991,
Image Vis. Comput..
[2]
Neil A. Thacker,et al.
The Use of Geometric Histograms for Model-Based Object Recognition
,
1993,
BMVC.
[3]
Neil A. Thacker,et al.
An Analysis of Pairwise Geometric Histograms for View-Based Object Recognition
,
1994,
BMVC.
[4]
N. Thacker,et al.
Multiple shape recognition using pairwise geometric histogram based algorithms
,
1995
.