Title of article :
Efficient Belief Propagation for Early Vision
Author/Authors :
PEDRO F. FELZENSZWALB، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Markov random field models provide a robust and unified framework for early vision problems such
as stereo and image restoration. Inference algorithms based on graph cuts and belief propagation have been found
to yield accurate results, but despite recent advances are often too slow for practical use. In this paper we present
some algorithmic techniques that substantially improve the running time of the loopy belief propagation approach.
One of the techniques reduces the complexity of the inference algorithm to be linear rather than quadratic in the
number of possible labels for each pixel, which is important for problems such as image restoration that have a
large label set. Another technique speeds up and reduces the memory requirements of belief propagation on grid
graphs. A third technique is a multi-grid method that makes it possible to obtain good results with a small fixed
number of message passing iterations, independent of the size of the input images. Taken together these techniques
speed up the standard algorithm by several orders of magnitude. In practice we obtain results that are as accurate as
those of other global methods (e.g., using the Middlebury stereo benchmark) while being nearly as fast as purely
local methods.
Keywords :
belief propagation , Markov random fields , stereo , image restoration , Efficient algorithms
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION