LI Meng, LIU Xing, REN Ze-min. A Phase Field Variational Model Joint Sobolev Gradient for Saliency Detection[J]. Acta Electronica Sinica, 2018, 46(7): 1683-1690.
LI Meng, LIU Xing, REN Ze-min. A Phase Field Variational Model Joint Sobolev Gradient for Saliency Detection[J]. Acta Electronica Sinica, 2018, 46(7): 1683-1690. DOI: 10.3969/j.issn.0372-2112.2018.07.021.
An energy functional based on variational framework and the phase-transition theory is presented for saliency detection.We describe a Sobolev gradient to find minima of the proposed functional
and then a temporal evolution system for computer visual selection is produced.The process of saliency extraction is a dynamical competition between salient and non-salient component.Comparing the classical
L
2
gradient
we find that the Sobolev metric induces favorable regularity properties in their gradient flow.We demonstrate the consistency between the dynamical behavior of the evolution system and visual selection
which is very important for human to exploit new mechanism of saliency detection.Experimental results on various images show tha
t our model achieves better suppression of the information in background
while achieving higher detection precision of the object
texture
hair
etc
which is important in terms of human visual perception.