Multispectral SIFT for Scene Category Recognition
We use a simple modification to a conventional SLR camera to capture images of several hundred scenes in colour (RGB) and near-infrared (NIR). We show that the addition of near-infrared information leads to significantly improved performance in a scene-recognition task, and that the improvements are greater still when an appropriate 4-dimensional colour representation is used. In particular we propose MSIFT – a multispectral SIFT descriptor that, when combined with a kernel based classifier, exceeds the performance of state-of-the-art scene recognition techniques (e.g., GIST) and their multispectral extensions. We extensively test our algorithms using a new dataset of several hundred RGB-NIR scene images, as well as benchmarking against Torralba’s scene categorization dataset.
WOS:000295615800024
2011
177
184
The RGB-NIR database used in this paper can be downloaded from http://ivrg.epfl.ch/supplementary_material/cvpr11/index.html
REVIEWED
EPFL
Event name | Event place | Event date |
Colorado Springs, CO, USA | June 2011 | |