Existing saliency detection methods can not suppress the background effectively and detect the salient object accurately in complex background
a method of superpixel content-aware priors based multi-scale Bayesian saliency detection is proposed. Firstly
the image containing object is segmented into multi-scale superpixel maps
then the content-aware priors of contrast priors
center position priors
and boundary connected background priors are introduced on each scale to calculate the salient object values on a single scale; Secondly
the content-aware priors values of the various scales generate a rough saliency map; Thirdly
the rough saliency map value is used as the prior probability
and the likelihood is calculated according to the color histogram and the convex hull center
using the multi-scale Bayesian model to obtain the final salient object; Finally
three public data sets
five evaluation indicators
and seven existing methods are used for comparative experiments. The experiments show that the method has better performance in the detection of salient objects.