BMVC IndexRecovering More Classes than Available Bands for Mixed Pixels in Remote SensingViewing Real-World ImageryIncreased Extent of Characteristic Views using Shape-from-Shading for Object Recognition

Efficient Dense Matching for Textured Scenes using Region Growing
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M. Lhuillier

GRAVIR-IMAG and INRIA Rhone-Alpes
Equipe MOVI
655
Avenue de l'Europe
38330 Montbonnot France

Contact: Maxime.Lhuillier@inrialpes.fr

Abstract

We present a simple and efficient dense matching method based on region growing techniques, which can be applied to a wide range of globally textured images like many outdoor scenes. Our method can deal with non-rigid scenes and large camera motions. First a few highly distinctive features like points or areas are extracted and matched. These initial matches are then used in a correlation-based region growing step which propagates the matches in textured and more ambiguous regions of the images. The implementation of the algorithm is also given and is demonstrated on real image pairs.

Keywords: Dense Matching, Region Growing, Correlation
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BMVC IndexRecovering More Classes than Available Bands for Mixed Pixels in Remote SensingViewing Real-World ImageryIncreased Extent of Characteristic Views using Shape-from-Shading for Object Recognition

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