DocumentCode
82877
Title
Image Classification Using Multiscale Information Fusion Based on Saliency Driven Nonlinear Diffusion Filtering
Author
Weiming Hu ; Ruiguang Hu ; Nianhua Xie ; Haibin Ling ; Maybank, Steve
Author_Institution
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Volume
23
Issue
4
fYear
2014
fDate
Apr-14
Firstpage
1513
Lastpage
1526
Abstract
In this paper, we propose saliency driven image multiscale nonlinear diffusion filtering. The resulting scale space in general preserves or even enhances semantically important structures such as edges, lines, or flow-like structures in the foreground, and inhibits and smoothes clutter in the background. The image is classified using multiscale information fusion based on the original image, the image at the final scale at which the diffusion process converges, and the image at a midscale. Our algorithm emphasizes the foreground features, which are important for image classification. The background image regions, whether considered as contexts of the foreground or noise to the foreground, can be globally handled by fusing information from different scales. Experimental tests of the effectiveness of the multiscale space for the image classification are conducted on the following publicly available datasets: 1) the PASCAL 2005 dataset; 2) the Oxford 102 flowers dataset; and 3) the Oxford 17 flowers dataset, with high classification rates.
Keywords
image classification; image fusion; nonlinear filters; visual databases; Oxford 102 flowers dataset; Oxford 17 flowers dataset; PASCAL 2005 dataset; background image regions; classification rates; foreground features; image classification; multiscale information fusion; multiscale space; saliency driven nonlinear diffusion filtering; Classification algorithms; Clutter; Context; Equations; Filtering; Image classification; Image edge detection; Saliency detection; image classification; multiscale information fusion; nonlinear diffusion;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2014.2303639
Filename
6728740
Link To Document