|  | The release 1.2.0 of the Bob signal-processing and machine learning toolbox is available .
 Bob provides both efficient implementations of several machine     learning algorithms as well as a framework to help researchers to     publish reproducible research.
 
 
     The previous release of Bob was providing:
 * image, video and audio IO interfaces such as jpg, avi, wav,
 * database accessors such as FRGC, Labelled Face in the Wild, and many     others,
 *mage processing: Local Binary Patterns (LBPs), Gabor Jets,  SIFT,
 * machines  and trainers such as Support Vector Machines (SVMs), k-Means,     Gaussian Mixture Models (GMMs), Inter-Session Variability modeling     (ISV), Joint Factor Analysis (JFA), Probabilistic Linear     Discriminant Analysis (PLDA), Bayesian intra/extra (personal)     classifier,
 
 The new release of Bob has brought the following features and/or improvements, such as:
 * Unified implementation of Local Binary Patterns (LBPs),
 * Histograms of Oriented Gradients (HOG) implementation,
 * Total variability (i-vector) implementation,
 * Conjugate gradient based-implementation for logistic regression,
 * Improved multi-layer perceptrons implementation (Back-propagation can now be easily used in combination with any optimizer -- i.e     L-BFGS),
 * Pseudo-inverse-based method for Linear Discriminant Analysis,
 * Covariance-based method for Principal Component Analysis,
 * Whitening and within-class covariance normalization techniques,
 * Module for object detection and keypoint localization     (bob.visioner),
 * Module for audio processing including feature extraction such as LFCC and     MFCC,
 * Improved extensions (satellite packages), that now support both     Python and C++ code, within an easy to use framework,
 * Improved documentation and add new tutorials,
 * Support for Intel's MKL (in addition to ATLAS),
 * Extend supported platforms (Arch Linux).
 
 This release represents a major milestone in Bob with plenty of  functionality improvements (>640 commits in total) and plenty of bug fixes.
 • Sources and Documentation
 • Binary packages:
 •     Ubuntu: 10.04, 12.04, 12.10 and 13.04
 • For     Mac OSX: works with 10.6 (Snow Leopard), 10.7 (Lion) and 10.8     (Mountain Lion)
 
 For instructions on how to install pre-packaged version on Ubuntu or     OSX, consult our quick       installation instructions  (N.B. OS X macport has not yet been     upgraded. This will be done very soon. cf. https://trac.macports.org/ticket/39831 ).
 
 
 Best regards,
 Elie Khoury (on Behalf of the Biometric Group at Idiap lead by Sebastien Marcel)
 
 
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  Dr. Elie Khoury Post Doctorant Biometric Person Recognition Group  IDIAP Research Institute (Switzerland) Tel : +41 27 721 77 23 |