Scene segmentation from dense displacement vector fields using randomized Hough transform

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摘要

A method which combines two different paradigms for segmenting an image scene by evaluating dense displacement vector fields is presented. First, a rough but robust decomposition of the vector field is achieved by using randomized Hough transform, a technique which is independent from prior knowledge about the actual number of segments in the scene. Subsequently, a merging step fuses those segments most likely belonging to the same object. Finally, a refinement of the segmentation mask is attained by means of a maximum a posteriori (MAP) criterion. To this end the mask is modelled as a Gibbs-Markov random field under the assumption that the scene objects are spatially continuous and only moving slowly between consecutive image frames.

论文关键词:Segmentation of displacement vector fields,Randomized Hough transform,Segment merging,Gibbs-Markov random fields

论文评审过程:Received 9 February 1995, Available online 19 May 1998.

论文官网地址:https://doi.org/10.1016/S0923-5965(96)00006-9