MuFeSaC: Learning When to Use Which Feature Detector
Sreenivas R. Sukumar, David Page, Hamparsum Bozdogan, Andreas Koschan, Mongi A. Abidi
- Year
- 2007
- Citations
- 2
Abstract
Interest point detectors are the starting point in image analysis for depth estimation using epipolar geometry and camera ego-motion estimation. With several detectors defined in the literature, some of them outperforming others in a specific application context, we introduce multi-feature sample consensus (MuFeSaC) as an adaptive and automatic procedure to choose a reliable feature detector among competing ones. Our approach is derived based on model selection criteria that we demonstrate for mobile robot self-localization in outdoor environments consisting of both man-made structures and natural vegetation.
Keywords
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