Title
Visual Saliency Detection For Rgb-D Images With Generative Model
Abstract
In this paper, we propose a saliency detection model for RGB-D images based on the contrasting features of colour and depth with a generative mixture model. The depth feature map is extracted based on superpixel contrast computation with spatial priors. We model the depth saliency map by approximating the density of depth-based contrast features using a Gaussian distribution. Similar to the depth saliency computation, the colour saliency map is computed using a Gaussian distribution based on multi-scale contrasts in superpixels by exploiting low-level cues. By assuming that colour-and depth-based contrast features are conditionally independent, given the classes, a discriminative mixed-membership naive Bayes (DMNB) model is used to calculate the final saliency map from the depth saliency and colour saliency probabilities by applying Bayes' theorem. The Gaussian distribution parameter can be estimated in the DMNB model by using a variational inferencebased expectation maximization algorithm. The experimental results on a recent eye tracking database show that the proposed model performs better than other existing models.
Year
DOI
Venue
2016
10.1007/978-3-319-54193-8_2
COMPUTER VISION - ACCV 2016, PT V
Field
DocType
Volume
Computer vision,Naive Bayes classifier,Pattern recognition,Computer science,Salience (neuroscience),Expectation–maximization algorithm,Gaussian,Artificial intelligence,Prior probability,Discriminative model,Mixture model,Generative model
Conference
10115
ISSN
Citations 
PageRank 
0302-9743
2
0.39
References 
Authors
0
4
Name
Order
Citations
PageRank
Song-Tao Wang120.39
Zhen Zhou23012.87
Han-Bing Qu341.79
Bin Li420.39