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Performance evaluation of image-based location recognition approaches based on large-scale UAV imagery

Nikolas Hesse, Christoph Bodensteiner, Michael Arens

Year
2014
Citations
2
Access
Open access

Abstract

Recognizing the location where an image was taken, solely based on visual content, is an important problem in computer vision, robotics and remote sensing. This paper evaluates the performance of standard approaches for location recognition when applied to large-scale aerial imagery in both electro-optical (EO) and infrared (IR) domains. We present guidelines towards optimizing the performance and explore how well a standard location recognition system is suited to handle IR data. We show on three datasets that the performance of the system strongly increases if SIFT descriptors computed on Hessian-Affine regions are used instead of SURF features. Applications are widespread and include vision-based navigation, precise object geo-referencing or mapping.

Keywords

Computer scienceArtificial intelligenceComputer visionScale-invariant feature transformCognitive neuroscience of visual object recognitionScale (ratio)Affine transformationHessian matrixVisualizationPattern recognition (psychology)

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