학술논문

Fast scene recognition based on saliency region and SURF
Document Type
Conference
Source
2011 2nd International Conference on Intelligent Control and Information Processing Intelligent Control and Information Processing (ICICIP), 2011 2nd International Conference on. 2:863-866 Jul, 2011
Subject
Computing and Processing
Robotics and Control Systems
Entropy
Feature extraction
Robustness
Fourier transforms
Visualization
Computer vision
Image recognition
Scene recognition
SURF
PFT
extreme points
saliency region
Language
Abstract
Scene recognition is a hot topic in the field of computer vision, a fast scene recognition method based on saliency region and SURF (speeded up robust features) is proposed in this paper. This method adopts PFT (phase fourier transform) to construct saliency map, on the basis the algorithm of top-ranking extreme points selection based neighborhood entropy is used get saliency region information. Finally scene recognition is implemented using SURF of the saliency region. The method effectively improves real-time of scene recognition and the capability of scene analysis. Compared with other scene recognition methods, it has a better invariance in image rotation, scaling, translation and a substantial range of affine distortion, meanwhile having better real-time. The results of experiments with university of Southern California scene database demonstrate that the method performed well in recognition result, computational speed and robustness.