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Journal of Industrial and Management Optimization (JIMO)
 

Multimodal image registration by elastic matching of edge sketches via optimal control
Pages: 567 - 590, Issue 2, April 2014

doi:10.3934/jimo.2014.10.567      Abstract        References        Full text (3758.3K)           Related Articles

Angel Angelov - Otto-Hahn-Str. 15, D-30880 Laatzen, Germany (email)
Marcus Wagner - University of Leipzig, Department of Mathematics, P. O. B. 10 09 20, D-04009 Leipzig, Germany (email)

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