Title
A combined model for scan path in pedestrian searching
Abstract
Target searching, i.e. fast locating target objects in images or videos, has attracted much attention in computer vision. A comprehensive understanding of factors influencing human visual searching is essential to design target searching algorithms for computer vision systems. In this paper, we propose a combined model to generate scan paths for computer vision to follow to search targets in images. The model explores and integrates three factors influencing human vision searching, top-down target information, spatial context and bottom-up visual saliency, respectively. The effectiveness of the combined model is evaluated by comparing the generated scan paths with human vision fixation sequences to locate targets in the same images. The evaluation strategy is also used to learn the optimal weighting coefficients of the factors through linear search. In the meanwhile, the performances of every single one of the factors and their arbitrary combinations are examined. Through plenty of experiments, we prove that the top-down target information is the most important factor influencing the accuracy of target searching. The effects from the bottom-up visual saliency are limited. Any combinations of the three factors have better performances than each single component factor. The scan paths obtained by the proposed model are optimal, since they are most similar to the human vision fixation sequences.
Year
DOI
Venue
2014
10.1109/IJCNN.2014.6889684
IJCNN
Keywords
Field
DocType
spatial context,pedestrians,video signal processing,human vision searching,top-down target information,fast locating target objects,computer vision systems,human visual searching,scan path,bottom-up visual saliency,object tracking,pedestrian searching,visual attention,computer vision,videos,human vision fixation sequences,optimal weighting coefficients,images,target searching algorithms,computational modeling,psychology,visualization,context modeling
Computer vision,Pedestrian,Computer science,Human visual system model,Visual attention,Artificial intelligence,Spatial contextual awareness,Machine learning
Conference
ISSN
ISBN
Citations 
2161-4393
978-1-4799-6627-1
0
PageRank 
References 
Authors
0.34
7
6
Name
Order
Citations
PageRank
Lijuan Duan121526.13
Zeming Zhao200.34
Wei Ma31310.72
Jili Gu411.04
Zhen Yang5233.88
Yuanhua Qiao6316.68