The noniterative algorithm of multiscale MRF has much lower computing complexity and better result thanits iterative counterpart of noncausal MRF model, since it has causality property between scales, and such causali...The noniterative algorithm of multiscale MRF has much lower computing complexity and better result thanits iterative counterpart of noncausal MRF model, since it has causality property between scales, and such causality isconsistent with the character of images. Maximizer of the posterior marginals(MPM)algorithm of multiscale MRFmodel is presented for only one image can be obtained in image segmentation. EM algorithm for parameter estimate isalso given. Experiments demonstrate that comparing with iterative ones, the proposed algorithms have the character-istics of greatly reduced computing time and better segmentation results. This is more notable for large images.展开更多
文摘The noniterative algorithm of multiscale MRF has much lower computing complexity and better result thanits iterative counterpart of noncausal MRF model, since it has causality property between scales, and such causality isconsistent with the character of images. Maximizer of the posterior marginals(MPM)algorithm of multiscale MRFmodel is presented for only one image can be obtained in image segmentation. EM algorithm for parameter estimate isalso given. Experiments demonstrate that comparing with iterative ones, the proposed algorithms have the character-istics of greatly reduced computing time and better segmentation results. This is more notable for large images.