| 1 | /*! |
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| 2 | \mainpage Bayesian Decision-Making toolbox for C++ |
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| 3 | |
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| 4 | \version 0.1 |
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| 5 | |
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| 6 | \author Vaclav Smidl |
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| 7 | |
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| 8 | BDM is a collection of methods for selected tasks of Bayesian decision-making, such as estimation, filtering and control. |
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| 9 | |
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| 10 | \section fea Features |
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| 11 | At present the following algorithms are implemented: |
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| 12 | - \b Bayesian \b filtering : Kalman filter, EKF, patricle filter (PF), |
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| 13 | - these can be combined mutualy together in mode demanding schemes, see marginalized particle filter MPF |
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| 14 | |
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| 15 | - \b Classification using mixtures of exponential famiuly models (MixEF), |
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| 16 | - \b Density \b estimation : using mixtures (MixEF), density composition (merger) |
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| 17 | |
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| 18 | \section down Download and Use |
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| 19 | The library is available under GPL, see installation instructions on page \ref install |
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| 20 | |
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| 21 | Precompiled Mex files for use within Matlab are available \ref mexfiles |
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| 22 | |
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| 23 | \section app Design Approach |
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| 24 | The toolbox is designed using \b object-oriented approach with two design criteria: |
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| 25 | \li relation to mathematics, |
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| 26 | \li efficient evaluation, |
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| 27 | while the first one is more important than the latter. |
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| 28 | |
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| 29 | Hence, each mathematical object such as probability density is |
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| 30 | represented by one software object. The resulting algorithms are |
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| 31 | then implemented as operations on these objects. In cases when |
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| 32 | more efficient solution can be achived when this structure is not respected, |
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| 33 | a parallel implementation is created and clearly marked as specific. |
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| 34 | |
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| 35 | OpenMP is used to achive efficient implementation on parallel architectures. |
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| 36 | |
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| 37 | \section impl Implementation |
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| 38 | |
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| 39 | BDM is build on top of \c IT++ which wraps numerically efficient operations of linear algebra into easy to use C++ classes. Thanks to this excellent library, writing of numerical algorithms is as easy as in Matlab but we gain significant advantages: |
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| 40 | |
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| 41 | \li computational speed comparable to built-in Matlab function, and surpassing interpreted Matlab in order of magnitudes, |
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| 42 | \li native support for object-oriented programming, |
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| 43 | \li support for templates which is often more appropriate than object-oriented programming, |
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| 44 | \li cross-platform compatibility. |
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| 45 | |
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| 46 | |
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| 47 | */ |
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