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Bayesian Belief Propagation and Image Interpretation

Bayesian Belief Propagation and Image Interpretation. March 13, 2002. Presenter: David Rosenberg. Overview. Deals with problems in which we want to estimate local scene properties that may depend, to some extent, on global properties

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Bayesian Belief Propagation and Image Interpretation

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  1. Bayesian Belief Propagation and Image Interpretation March 13, 2002 Presenter: David Rosenberg

  2. Overview • Deals with problems in which we want to estimate local scene properties that may depend, to some extent, on global properties • Paper demonstrates that Bayesian Belief Propagation (BBP) is a very good technique for this class of problems • In the paper’s examples, the answers are often significantly better and converge significantly faster.

  3. An Introductory Problem: Interpolation • Find a sequence of consecutive segments that • approximate our data points and • has small derivatives for each segment. ? ?

  4. Interpolation Problem (continued) • We can formalize this problem as minimizing the following cost functional: NOTE: J(Y) is a sum of terms, each containing “neighboring” variables • Standard solutions to minimization problems: • Gradient Descent / Relaxation • Gauss-Seidel relaxation • Successive over relaxation (SOR) • Simulated Annealing

  5. The Core Idea • We can rewrite certain cost functional minimization problems as MAP estimate problems for Markov Random Fields • This is important to because Bayesian Belief Propagation gives optimal solutions very quickly, for MRFs with certain graph structures

  6. Mapping Cost Minimization to MAP • Note that minimizing J(Y) is equivalent to maximizing exp( - J(Y) ). • Suppose our cost functional has the form: • Then we can also find Y that maximizes Already looks like a product of localized potentials.

  7. Mapping Cost Minimization to MAP (continued) • By constraining J to be a sum, we’ve reduced our problem to the maximization of: • Since this function is strictly positive, we can normalize to create a PDF. • (This could be a Gibbs distribution!)

  8. Mapping Cost Minimization to MAP (continued) • So finding the y’s that minimize J(Y), subject to the observations that constrain some y*s is equivalent to finding the mode (peak) of the distribution P(Y|Y*). • This is just the MAP estimate of Y given Y*.

  9. Cost Minimization to MAP on MRF (continued) • We have • If we can associate each r.v. in Y to a node of a graph G • such that each of the YC’s is a clique in G, • then P(Y) is a Gibbs distribution w.r.t. G. • If P(Y) is a Gibbs distribution w.r.t. a graph G, • then the r.v.’s Y are a Markov random field (MRF), • (Hammersley-Clifford Theorem)

  10. MAP on MRF to Cost Function Minimization • Start with the MAP problem on an MRF. • Every MRF has a Gibbs distribution, • also by the Hammersley-Clifford theorem. • By reversing our steps, we will find a cost function J(Y) whose minimization corresponds to the MAP estimate on the MRF. • Thus any problem we can solve by finding the MAP estimate on an MRF, we can also solve by minimizing some cost functional.

  11. y1 x1 y2 x2 y3 x3 Our Simplified Problem (from paper) • We have • hidden “scene” variables: Xj • observed “image” variables Yj • We assume that the following graph structure is implicit in our cost functional: • The Problem: • Given some Yj’s, estimate the Xj’s

  12. Straightforward Exact Inference • Given the joint PDF • typically specified using potential functions • We can just marginalize out to • get the aposteriori distribution for each Xj • We can immediately extract the • MAP estimate -- just the mode of the aposteriori distribution • Least squares estimate -- just the expected value of the aposteriori distribution

  13. y1 x1 y2 x2 y3 x3 Derivation of belief propagation

  14. y1 y3 y2 x1 x3 x2 The posterior factorizes

  15. y1 y3 y2 x1 x3 x2 Propagation rules

  16. y1 y3 y2 x1 x3 x2 Propagation rules

  17. Belief, and message updates j = i j i

  18. Optimal solution in a chain or tree:Belief Propagation • “Do the right thing” Bayesian algorithm. • For Gaussian random variables over time: Kalman filter. • For hidden Markov models: forward/backward algorithm (and MAP variant is Viterbi).

  19. y1 y3 y2 x1 x3 x2 Y ( x , x ) 1 3 No factorization with loops!

  20. The (Discrete) Interpolation Problem • Used the integers {1,…,5} as the domain and range. • Used evidence:

  21. y1 y3 y2 x1 x3 x2 The (Discrete) Interpolation Problem • How do we put the evidence into the MRF? • As a prior on the random variables. • Comes from the noise or sensor model. • I tried two priors: • 1. (example priors) • Observed 1 --> Prior: 25 16 9 4 1 • Observed 3 --> Prior: 9 16 25 16 9 • 2. (example priors) • Observed 1 --> Prior: 625 256 81 4 1

  22. y1 y3 y2 x3 x1 x2 The (Discrete) Interpolation Problem • How do we specify the derivative constraint? • We adjust the potential functions between adjacent random variables: • We want potential functions that look something like: • 10 1 1 1 11 10 1 1 11 1 10 1 11 1 1 10 11 1 1 1 10 • I call the ratio “10:1” the tightness.

  23. Results for First Prior Tightness = 2 Tightness = 4 Tightness = 6

  24. Results for Second Prior Tightness = 2 Tightness = 4 Tightness = 6

  25. Weiss’s Examples • Interior/exterior example. • Motion example • In both examples, BBP had results that were much better, and converged much faster than other techniques.

  26. Conclusions: When to use BBP? • Among all problems expressible as cost function minimization. • Among problems expressible as MAP or MMSE problems on MRFs • Graph topology should be relatively sparse. • Messages per iteration increases linearly with the number of edges • Reasonably small number of dimensions for r.v. distributions. • Approximate Inference

  27. EXTRA SLIDES

  28. Slide on Weiss’s Motion Detection

  29. Mention some approximate inference approaches

  30. Complexity issues with message passing • How long are messages • How many messages do we have to pass per iteration • How many iterations until convergence • Problem quickly becomes intractible

  31. Slides on message passing with jointly gaussian distributions???

  32. BACKUP SLIDES

  33. Markov Random Fields • Let G be an undirected graph • nodes: {1, …, n} • Associate a random variable X_t to each node t in G. • (X_1, …, X_n) is a Markov random field on G if • Every r.v. is independent of its nonneighbors conditioned on its neighbors. • P(X_t=x_t | X_s = x_s for all s \neq t} = P(X_t=x_t | X_s = x_s for all s\in N(t)),where N(s) be the set of neighbors of a node s.

  34. Specifying a Markov Random Field • Nice if we could just specify P( X | N(X) )for all r.v.’s X (as with Bayesian networks) • Unfortunately, this will overspecify the joint PDF. • E.g. X_1 -- X_2. • Joint PDF has 3 degrees of freedom • Conditiona PDFs X_1|X_2 and X_2|X_1 have 2 degrees of freedom each • The Hammersley-Clifford Theorem helps to specify MRFs

  35. The Gibbs Distribution • A Gibbs distribution w.r.t. graph G is a probability mass function that can be expressed in the form • P(x_1, … , x_n) = Prod _ Cliques C V_C(x_1, .., x_n) • where V_C(x_1, …, x_n) depends only on those x_I in C. • We can combine potential functions into products from maximal cliques, so • P(x_1, … , x_n) = Prod _ MaxCliques C V_C(x_1, .., x_n) • This may be better in certain circumstances because we don’t have to specify as many potential functions

  36. Hammersley Clifford Theorem • Let the r.v’s {X_j} have a positive joint probability mass function. • Then the Hammersley Clifford Theorem says that {X_j} is a Markov random field on graph G iff it has a Gibbs distirubtion w.r.t G. • Side Note: Hammserley and Clifford discovered this theorem in 1971, but they didn’t publish it because they kept thinking they should be able to remove or relax the positivity assumption. They couldn’t. Clifford published the result in 1990. • Specifying the potential functions is equivalent to specifying the joint probability distribution of all variables. • Now it’s easy to specify a valid MRF • still not easy to determine the degrees of freedom in the distribution (normalization)

  37. Incorporating Evidence nodes into MRFs • We would like to have nodes that don’t change their beliefs -- they are just observations. • Can we do this via the potential functions on the non-maximal clique containing just that node? • I tink this is what they do in the Yair Weiss implementation • What if we don’t want to specify a potential function? Make it identically one, since it’s in a product.

  38. From cost functional to transition matrix

  39. From cost functional to update rule

  40. From update rule to transition matrix

  41. The factoriation into pair wise potentials -- good for general Markov networks

  42. Other Stuff • For shorthand, we will write x = (x_1, …, x_n).

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