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OpenGM 2

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Forum / Newsgroup -> https://groups.google.com/forum/#!forum/opengm

Manual for OpenGM 2.0.2 -> http://hci.iwr.uni-heidelberg.de//opengm2/download/opengm-2.0.2-beta-manual.pdf

Code-Documentation for OpenGM 2.0.2 -> http://hci.iwr.uni-heidelberg.de//opengm2/doxygen/opengm-2.0.2-beta/html/index.html

OpenGM is a C++ template library for discrete factor graph models and distributive operations on these models. It includes state-of-the-art optimization and inference algorithms beyond message passing. OpenGM handles large models efficiently, since (i) functions that occur repeatedly need to be stored only once and (ii) when functions require different parametric or non-parametric encodings, multiple encodings can be used alongside each other, in the same model, using included and custom C++ code. No restrictions are imposed on the factor graph or the operations of the model. OpenGM is modular and extendible. Elementary data types can be chosen to maximize efficiency. The graphical model data structure, inference algorithms and different encodings of functions interoperate through well-defined interfaces. The binary OpenGM file format is based on the HDF5 standard and incorporates user extensions automatically.

Features

Factor Graph Models (Kschischang et al. 2001)
    Graphs of any order and structure, from second order grid graphs to irregular higher-order models
    Arbitrary (commutative and associative) operations, including sum, product, conjunction and disjunction
    Flexible number of labels (different variables can have differently many labels)
    Function sharing across factors
    Function type abstraction. Different (built-in and custom) encodings can be used alongside each other
Functions
    Explicit function (multi-dimensional table)
    Sparse function (sparse multi-dimensional table)
    Potts functions (different types, including higher-order)
    Truncated absolute difference
    Truncated squared difference
    Views that treat one graphical model as a function within another graphical model
Algorithms
    Loopy Belief Propagation (Pearl 1988, Yedidia et al. 2000)
        parallel and sequential min-sum and max-product message passing (also for higher-order models)
        message damping (Wainwright 2008)
    Tree-reweighted Belief Propagation (TRBP) (Wainwright et al. 2005)
        parallel and sequential min-sum and max-product message passing (also for higher-order models)
        message damping (Wainwright 2008)
    A-star branch-and-bound search (Bergtholdt et al. 2009)
    Dual Decomposition
        With sub-gradient methods (Kappes et al. 2010)
        With bundle methods (Kappes et al. 2012)
        Automated decomposition of arbitrary factor graphs
        Arbitrary sub-solvers via templates
    Graph Cut (Boykov et al. 2001).
        Push-Relabel (Goldberg and Tarjan 1986)
        Edmonds-Karp (Edmonds and Karp 1972)
        Kolmogorov (Boykov and Kolmogorov 2004)
    QPBO
    MQPBO
    Linear Programming Relaxations over the Local Polytope
    TRWS
    ADSAL
    CombiLP
    Integer Linear Programming
    Multicut (Kappes et al. 2011)
    Reduced-Inference (Kappes et al. 2013)
    Alpha-Expansion
    Alpha-Beta-Swap
    Alpha-Fusion
    Inf and Flip
    Iterated Conditional Modes (ICM) (Besag 1986)
    Lazy Flipper (Andres et al. 2010)
    Kerninghan Lin
    MCMC Metropolis-Hastings algorithms (Metropolis et al. 1953)
        Gibbs sampling (Geman and Geman 1984)
        Swendsen-Wang sampling (Swendsen and Wang 1987)
    Wrappers around other graphical model libraries
        MRF-LIB
        LIB-DAI
        TRW-S
        QPBO
        GCO
        FastPD
        AD3
        DAOOPT
        MPLP, MPLP-C
Binary HDF5 file format
Command Line Optimizer with built-in protocol mode for runtime and convergence analyses
Python Module with OpenGM C++ API exported to Python with boost::python
    Allmost the complete C++ API is exported to Python
    Allmost all C++ inference algorithms wrapped to Python
    Vectorized API to add multiple functions and factors at once
    Add functions via numpy ndarrays
    Add functions via all default opengm function types
    Extendibility through interfaces for
        custom pure python function types
        custom pure python visitor for inference
            visualization of current inference state with matplotlib 
    Visualize Factor Graph (needs networkx and graphviz)
High performance
    Graphical models with more than 10,000,000 factors
    Specialized functions for optimized cache usage
Extendibility through interfaces for
    custom algorithms
    custom functions
    custom label spaces

opengm/opengm - master

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DerThorsten/opengm - master (opengm-python dev.)

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Copyright (C) 2012 Bjoern Andres, Thorsten Beier and Joerg H.~Kappes.

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.

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A C++ Library for Discrete Graphical Models

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