In order to describe images acquired with unmanned aerial vehicles (UAV), we introduce in this paper a multilabeling classification method. It starts by subdividing the original UAV image into a grid of tiles which are then analyzed separately. From each tile, a signature which encodes texture information is extracted and compared with the signatures of the tiles belonging to a pre-built training dictionary in order to acquire the binary multilabel vector of the most similar tile. In order to represent and match the tiles, we exploit a well-known texture operator and a common distance measure, respectively. Promising experimental results, in particular for some classes of objects, are obtained on real UAV images acquired over urban areas.

LBP-Based Multiclass Classification Method for UAV Imagery

Moranduzzo, Thomas;Melgani, Farid
2015-01-01

Abstract

In order to describe images acquired with unmanned aerial vehicles (UAV), we introduce in this paper a multilabeling classification method. It starts by subdividing the original UAV image into a grid of tiles which are then analyzed separately. From each tile, a signature which encodes texture information is extracted and compared with the signatures of the tiles belonging to a pre-built training dictionary in order to acquire the binary multilabel vector of the most similar tile. In order to represent and match the tiles, we exploit a well-known texture operator and a common distance measure, respectively. Promising experimental results, in particular for some classes of objects, are obtained on real UAV images acquired over urban areas.
2015
Proc. of the IEEE-International Geoscience and Remote Sensing Symposium IGARSS-2015
New York, USA
IEEE
9781479979295
Moranduzzo, Thomas; Mekhalfi, M. L.; Melgani, Farid
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/154285
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