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ICPR
2006
IEEE

Multi-orientation analysis by decomposing the structure tensor and clustering

14 years 5 months ago
Multi-orientation analysis by decomposing the structure tensor and clustering
The structure tensor yields an excellent characterization of the local dimensionality and the corresponding orientation for simple neighborhoods, i.e. neighborhoods exhibiting a single orientation. We show that we can disentangle crossing structures if the tensor scale is much larger than the gradient scale. Mapping the gradient vectors to a continuous orientation representation yields a ?D(D+1)dimensional feature vector per pixel. Clustering of the vectors in this new space allows identification of multiple orientations. Each cluster of gradient vectors can be analyzed separately using the structure tensor approach. Proper clustering yields an unbiased estimate of the underlying orientations.
Lucas J. van Vliet, Frank G. A. Faas
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2006
Where ICPR
Authors Lucas J. van Vliet, Frank G. A. Faas
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