Volume 9, Number 12, Article 15, Pages 1-27 doi:10.1167/9.12.15 http://journalofvision.org/9/12/15/ ISSN 1534-7362
Static and space-time visual saliency detection by self-resemblance
Hae Jong Seo
Electrical Engineering Department, University of California, Santa Cruz, Santa Cruz, CA, USA
[home] [e-mail]
Peyman Milanfar
Electrical Engineering Department, University of California, Santa Cruz, Santa Cruz, CA, USA
[home] [e-mail]
Abstract

We present a novel unified framework for both static and space-time saliency detection. Our method is a bottom-up approach and computes so-called local regression kernels (i.e., local descriptors) from the given image (or a video), which measure the likeness of a pixel (or voxel) to its surroundings. Visual saliency is then computed using the said “self-resemblance” measure. The framework results in a saliency map where each pixel (or voxel) indicates the statistical likelihood of saliency of a feature matrix given its surrounding feature matrices. As a similarity measure, matrix cosine similarity (a generalization of cosine similarity) is employed. State of the art performance is demonstrated on commonly used human eye fixation data (static scenes (N. Bruce & J. Tsotsos, 2006) and dynamic scenes (L. Itti & P. Baldi, 2006)) and some psychological patterns.

View full-text

History
Received May 13, 2009; published November 20, 2009
Citation
Seo, H. J., & Milanfar, P. (2009). Static and space-time visual saliency detection by self-resemblance. Journal of Vision, 9(12):15, 1-27, http://journalofvision.org/9/12/15/, doi:10.1167/9.12.15.
Keywords
saliency, attention, eye movements, computational modeling
Downloads
126 Total.
 
Search
for articles that cite this paper
for related articles by these authors
for papers that cite this paper
Get citation






jov