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Learning to Combine Bottom-Up and Top-Down Segmentation
Anat Levin and Yair Weiss School of CS&Eng, The Hebrew University of Jerusalem, Israel
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Bottom-up segmentation
Bottom-up approaches: Use low level cues to group similar pixels Malik et al, 2000 Sharon et al, 2001 Comaniciu and Meer, 2002 …
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Bottom-up segmentation is ill posed
Many possible segmentation are equally good based on low level cues alone. Some segmentation example (maybe horses from Eran’s paper) images from Borenstein and Ullman 02
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Top-down segmentation
Class-specific, top-down segmentation (Borenstein & Ullman Eccv02) Winn and Jojic 05 Leibe et al 04 Yuille and Hallinan 02. Liu and Sclaroff 01 Yu and Shi 03
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Combining top-down and bottom-up segmentation
+ Find a segmentation: Similar to the top-down model Aligns with image edges
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Previous approaches Borenstein et al 04 Combining top-down and bottom up segmentation. Tu et al ICCV03 Image parsing: segmentation, detection, and recognition. Kumar et al CVPR05 Obj-Cut. Shotton et al ECCV06: TextonBoost Previous approaches: Train top-down and bottom-up models independently
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Why learning top-down and bottom-up models simultaneously?
Large number of freedom degrees in tentacles configuration- requires a complex deformable top down model On the other hand: rather uniform colors- low level segmentation is easy
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Our approach Learn top-down and bottom-up models simultaneously
Reduces at run time to energy minimization with binary labels (graph min cut)
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Segmentation alignment with image edges
Energy model Segmentation alignment with image edges Consistency with fragments segmentation
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Segmentation alignment with image edges
Energy model Segmentation alignment with image edges Consistency with fragments segmentation
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Segmentation alignment with image edges
Energy model Segmentation alignment with image edges Consistency with fragments segmentation Resulting min-cut segmentation
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Learning from segmented class images
Training data: Goal: Learn fragments for an energy function
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Learning energy functions using conditional random fields
Theory of CRFs: Lafferty et al 2001 LeCun and Huang 2005 CRFs For vision: Kumar and Hebert 2003 Ren et al 2006 He et al 2004, 2006 Quattoni et al 2005 Torralba et al 04
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Learning energy functions using conditional random fields
Maximize energy of all other configurations Minimize energy of true segmentation E(x) “It's not enough to succeed. Others must fail.” –Gore Vidal
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Learning energy functions using conditional random fields
Maximize energy of all other configurations Minimize energy of true segmentation P(x) P(x) “It's not enough to succeed. Others must fail.” –Gore Vidal
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Differentiating CRFs log-likelihood
Log-likelihood is convex with respect to Log-likelihood gradients with respect to : Expected feature response minus observed feature response Yair- in the original version of this slide I had another equation expressing the expectation as a sum of marginals (see next hidden slide). At least for me, it wasn’t originally clear what this expectation means before I saw the other equation. However, I try to delete un necessary equations..
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Conditional random fields-computational challenges
CRFs cost- evaluating partition function Derivatives- evaluating marginal probabilities Use approximate estimations: Sampling Belief Propagation and Bethe free energy Used in this work: Tree reweighted belief propagation and Tree reweighted upper bound (Wainwright et al 03)
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Fragments selection Candidate fragments pool: Greedy energy design:
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Fragments selection challenges
Straightforward computation of likelihood improvement is impractical 2000 Fragments 50 Training images 10 Fragments selection iterations 1,000,000 inference operations!
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Fragment with low error on the training set
Fragments selection First order approximation to log-likelihood gain: Fragment with low error on the training set Fragment not accounted for by the existing model Similar idea in different contexts: Zhu et al 1997 Lafferty et al 2004 McCallum 2003
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Fragments selection First order approximation to log-likelihood gain:
Requires a single inference process on the previous iteration energy to evaluate approximations with respect to all fragments First order approximation evaluation is linear in the fragment size
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Fragments selection- summary
Initialization: Low- level term For k=1:K Run TRBP inference using the previous iteration energy. Approximate likelihood gain of candidate fragments Add to energy the fragment with maximal gain.
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Training horses model
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Training horses model-one fragment
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Training horses model-two fragments
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Training horses model-three fragments
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Results- horses dataset
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Results- horses dataset
Mislabeled pixels percent Fragments number Comparable to previous results (Kumar et al, Borenstein et al.) but with far fewer fragments
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Results- artificial octopi
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From the TU Darmstadt Database
Results- cows dataset From the TU Darmstadt Database
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Results- cows dataset Mislabeled pixels percent Fragments number
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Conclusions Simultaneously learning top-down and bottom-up segmentation cues. Learning formulated as estimation in Conditional Random Fields Novel, efficient fragments selection algorithm Algorithm achieves state of the art performance with a significantly smaller number of fragments
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