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Mean-Field Theory and Its Applications In Computer Vision6

Mean-Field Theory and Its Applications In Computer Vision6. Inference In Product Label Space. Many problem requires jointly estimating labels in product label space. Black Box Solver. Left Camera Image. Object Class Segmentation. Right Camera Image. Dense Stereo Reconstruction.

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Mean-Field Theory and Its Applications In Computer Vision6

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  1. Mean-Field Theory and Its Applications In Computer Vision6

  2. Inference In Product Label Space • Many problem requires jointly estimating labels in product label space Black Box Solver Left Camera Image Object Class Segmentation Right Camera Image Dense Stereo Reconstruction

  3. Joint Object-Stereo Labelling • Computation complexity very high • Graph-cuts based method takes almost 50 secs for 320x200 image size • We propose mean-field based inference method • Our method takes 2 secs for the same task

  4. Joint stereo-object inference • Introduce two different set of variables disparity variable object variable Messages exchanged between the variables

  5. Joint stereo-object formulation Unary Potential • Weighted sum of object class, depth and joint potential • Joint unary potential based on histograms of height

  6. Joint stereo-object formulation Pairwise Potential • Object class and depth edges correlated • We disregard the joint pairwise terms though • Dense pairwise connection at both disparity variable and object variables

  7. Joint stereo-object formulation Higher Order Potential • Use higher order terms only for object variables

  8. Joint stereo-object updation For object variables Message from disparity variables to object variables

  9. Joint stereo-object updation For object variables Filtering is done using permutohedral lattice based filtering strategy

  10. Joint stereo-object updation For disparity variables Message from object variables to disparity variables

  11. Joint stereo-object updation For disparity variables Filtering is done using domain transform based filtering strategy

  12. Leuven dataset Some of qualitative results

  13. Leuven dataset Some of qualitative results

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