Commit 4cb305ad authored by Tiago de Freitas Pereira's avatar Tiago de Freitas Pereira
Browse files

[sphinx] Fixed references

parent 90a56c32
Pipeline #16558 passed with stage
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......@@ -13,7 +13,7 @@ class DCTBlocks (Extractor):
"""Extracts *Discrete Cosine Transform* (DCT) features from (overlapping) image blocks.
These features are based on the :py:class:`bob.ip.base.DCTFeatures` class.
The default parametrization is the one that performed best on the BANCA database in [WMM+11]_.
The default parametrization is the one that performed best on the BANCA database in [WMM11]_.
Usually, these features are used in combination with the algorithms defined in :ref:`bob.bio.gmm <bob.bio.gmm>`.
However, you can try to use them with other algorithms.
......
......@@ -11,7 +11,7 @@ import math
from bob.bio.base.extractor import Extractor
class LGBPHS (Extractor):
"""Extracts *Local Gabor Binary Pattern Histogram Sequences* (LGBPHS) [ZSG+05]_ from the images, using functionality from :ref:`bob.ip.base <bob.ip.base>` and :ref:`bob.ip.gabor <bob.ip.gabor>`.
"""Extracts *Local Gabor Binary Pattern Histogram Sequences* (LGBPHS) [ZSG05]_ from the images, using functionality from :ref:`bob.ip.base <bob.ip.base>` and :ref:`bob.ip.gabor <bob.ip.gabor>`.
The block size and the overlap of the blocks can be varied, as well as the parameters of the Gabor wavelet (:py:class:`bob.ip.gabor.Transform`) and the LBP extractor (:py:class:`bob.ip.base.LBP`).
......@@ -32,14 +32,14 @@ class LGBPHS (Extractor):
use_gabor_phases : bool
Extract also the Gabor phases (inline) and not only the absolute values.
In this case, Extended LGBPHS features [ZSQ+09]_ will be extracted.
In this case, Extended LGBPHS features [ZSQ09]_ will be extracted.
lbp_radius, lbp_neighbor_count, lbp_uniform, lbp_circular, lbp_rotation_invariant, lbp_compare_to_average, lbp_add_average
The parameters of the LBP.
Please see :py:class:`bob.ip.base.LBP` for the documentation of these values.
.. note::
The default values are as given in [ZSG+05]_ (the values of [ZSQ+09]_ might differ).
The default values are as given in [ZSG05]_ (the values of [ZSQ09]_ might differ).
sparse_histogram : bool
If specified, the histograms will be handled in a sparse way.
......
......@@ -72,7 +72,7 @@ The algorithms present an (incomplete) set of state-of-the-art face recognition
- feature : :py:class:`bob.bio.base.extractor.Linearize`
- algorithm : :py:class:`bob.bio.base.algorithm.PCA`
* ``lda``: The LDA algorithm applies a *Linear Discriminant Analysis* (LDA), here we use the combined PCA+LDA approach [ZKC+98]_:
* ``lda``: The LDA algorithm applies a *Linear Discriminant Analysis* (LDA), here we use the combined PCA+LDA approach [ZKC98]_:
- preprocessor : :py:class:`bob.bio.face.preprocessor.FaceCrop`
- feature : :py:class:`bob.bio.face.extractor.Eigenface`
......@@ -85,7 +85,7 @@ The algorithms present an (incomplete) set of state-of-the-art face recognition
- algorithm : :py:class:`bob.bio.face.algorithm.GaborJet`
* ``plda``: *Probabilistic LDA* (PLDA) [Pri07]_ is a probabilistic generative version of the LDA, in its scalable formulation of [ESM+13]_.
* ``plda``: *Probabilistic LDA* (PLDA) [Pri07]_ is a probabilistic generative version of the LDA, in its scalable formulation of [ESM13]_.
Here, we also apply it on pixel-based representations of the image, though also other features should be possible.
- preprocessor : :py:class:`bob.bio.face.preprocessor.FaceCrop`
......@@ -110,7 +110,7 @@ Further algorithms are available, when the :ref:`bob.bio.gmm <bob.bio.gmm>` pack
- feature : :py:class:`bob.bio.face.extractor.DCTBlocks`
- algorithm : :py:class:`bob.bio.gmm.algorithm.GMM`
* ``isv``: As an extension of the GMM algorithm, *Inter-Session Variability* (ISV) modeling [WMM+11]_ is used to learn what variations in images are introduced by identity changes and which not.
* ``isv``: As an extension of the GMM algorithm, *Inter-Session Variability* (ISV) modeling [WMM11]_ is used to learn what variations in images are introduced by identity changes and which not.
- preprocessor : :py:class:`bob.bio.face.preprocessor.TanTriggs`
- feature : :py:class:`bob.bio.face.extractor.DCTBlocks`
......@@ -128,13 +128,13 @@ Further algorithms are available, when the :ref:`bob.bio.gmm <bob.bio.gmm>` pack
Additionally, the following algorithms can be executed, when the :ref:`bob.bio.csu <bob.bio.csu>` package is installed.
* ``lrpca``: In Local Region PCA [PBD+11]_, the face is sub-divided into local regions and a PCA is performed for each local region.
* ``lrpca``: In Local Region PCA [PBD11]_, the face is sub-divided into local regions and a PCA is performed for each local region.
- preprocessor : :py:class:`bob.bio.csu.preprocessor.LRPCA`
- feature : :py:class:`bob.bio.csu.extractor.LRPCA`
- algorithm : :py:class:`bob.bio.csu.algorithm.LRPCA`
* ``lda-ir``: The LDA-IR (a.k.a. CohortLDA [LBP+12]_) extracts color information from images after, and computes a PCA+LDA projection on two color layers.
* ``lda-ir``: The LDA-IR (a.k.a. CohortLDA [LBP12]_) extracts color information from images after, and computes a PCA+LDA projection on two color layers.
- preprocessor : :py:class:`bob.bio.csu.preprocessor.LDAIR`
- feature : :py:class:`bob.bio.csu.extractor.LDAIR`
......
......@@ -7,26 +7,22 @@ References
==========
.. [TP91] *M. Turk and A. Pentland*. **Eigenfaces for recognition**. Journal of Cognitive Neuroscience, 3(1):71-86, 1991.
.. [ZKC+98] *W. Zhao, A. Krishnaswamy, R. Chellappa, D. Swets and J. Weng*. **Discriminant analysis of principal components for face recognition**, pages 73-85. Springer Verlag Berlin, 1998.
.. [ZKC98] *W. Zhao, A. Krishnaswamy, R. Chellappa, D. Swets and J. Weng*. **Discriminant analysis of principal components for face recognition**, pages 73-85. Springer Verlag Berlin, 1998.
.. [MWP98] *B. Moghaddam, W. Wahid and A. Pentland*. **Beyond eigenfaces: probabilistic matching for face recognition**. IEEE International Conference on Automatic Face and Gesture Recognition, pages 30-35. 1998.
.. [PBD+11] *P.J. Phillips, J.R. Beveridge, B.A. Draper, G. Givens, A.J. O'Toole, D.S. Bolme, J. Dunlop, Y.M. Lui, H. Sahibzada and S. Weimer*. **An introduction to the good, the bad, & the ugly face recognition challenge problem**. Automatic face gesture recognition and workshops (FG 2011), pages 346-353. 2011.
.. [LBP+12] *Y.M. Lui, D. Bolme, P.J. Phillips, J.R. Beveridge and B.A. Draper*. **Preliminary studies on the good, the bad, and the ugly face recognition challenge problem**. Computer vision and pattern recognition workshops (CVPRW), pages 9-16. 2012.
.. [PBD11] *P.J. Phillips, J.R. Beveridge, B.A. Draper, G. Givens, A.J. O'Toole, D.S. Bolme, J. Dunlop, Y.M. Lui, H. Sahibzada and S. Weimer*. **An introduction to the good, the bad, & the ugly face recognition challenge problem**. Automatic face gesture recognition and workshops (FG 2011), pages 346-353. 2011.
.. [LBP12] *Y.M. Lui, D. Bolme, P.J. Phillips, J.R. Beveridge and B.A. Draper*. **Preliminary studies on the good, the bad, and the ugly face recognition challenge problem**. Computer vision and pattern recognition workshops (CVPRW), pages 9-16. 2012.
.. [GHW12] *M. Günther, D. Haufe and R.P. Würtz*. **Face recognition with disparity corrected Gabor phase differences**. In Artificial neural networks and machine learning, volume 7552 of Lecture Notes in Computer Science, pages 411-418. 9/2012.
.. [ZSG+05] *W. Zhang, S. Shan, W. Gao, X. Chen and H. Zhang*. **Local Gabor binary pattern histogram sequence (LGBPHS): a novel non-statistical model for face representation and recognition**. Computer Vision, IEEE International Conference on, 1:786-791, 2005.
.. [ZSG05] *W. Zhang, S. Shan, W. Gao, X. Chen and H. Zhang*. **Local Gabor binary pattern histogram sequence (LGBPHS): a novel non-statistical model for face representation and recognition**. Computer Vision, IEEE International Conference on, 1:786-791, 2005.
.. [MM09] *C. McCool, S. Marcel*. **Parts-based face verification using local frequency bands**. In Advances in biometrics, volume 5558 of Lecture Notes in Computer Science. 2009.
.. [WMM+12] *R. Wallace, M. McLaren, C. McCool and S. Marcel*. **Cross-pollination of normalisation techniques from speaker to face authentication using Gaussian mixture models**. IEEE Transactions on Information Forensics and Security, 2012.
.. [WMM+11] *R. Wallace, M. McLaren, C. McCool and S. Marcel*. **Inter-session variability modelling and joint factor analysis for face authentication**. International Joint Conference on Biometrics. 2011.
.. .. [WMM12] *R. Wallace, M. McLaren, C. McCool and S. Marcel*. **Cross-pollination of normalisation techniques from speaker to face authentication using Gaussian mixture models**. IEEE Transactions on Information Forensics and Security, 2012.
.. [WMM11] *R. Wallace, M. McLaren, C. McCool and S. Marcel*. **Inter-session variability modelling and joint factor analysis for face authentication**. International Joint Conference on Biometrics. 2011.
.. [Pri07] *S. J. D. Prince*. **Probabilistic linear discriminant analysis for inferences about identity**. Proceedings of the International Conference on Computer Vision. 2007.
.. [ESM+13] *L. El Shafey, Chris McCool, Roy Wallace and Sébastien Marcel*. **A scalable formulation of probabilistic linear discriminant analysis: applied to face recognition**. IEEE Transactions on Pattern Analysis and Machine Intelligence, 35(7):1788-1794, 7/2013.
.. [ESM13] *L. El Shafey, Chris McCool, Roy Wallace and Sébastien Marcel*. **A scalable formulation of probabilistic linear discriminant analysis: applied to face recognition**. IEEE Transactions on Pattern Analysis and Machine Intelligence, 35(7):1788-1794, 7/2013.
.. [WM12] *R. Wallace and M. McLaren*. **Total variability modelling for face verification**. IET Biometrics, vol.1, no.4, 188-199, 12/2012
.. [TT10] *X. Tan and B. Triggs*. **Enhanced local texture feature sets for face recognition under difficult lighting conditions**. IEEE Transactions on Image Processing, 19(6):1635-1650, 2010.
.. [WLW04] *H. Wang, S.Z. Li and Y. Wang*. **Face recognition under varying lighting conditions using self quotient image**. In IEEE International Conference on Automatic Face and Gesture Recognition (AFGR), pages 819-824. 2004.
.. [HRM06] *G. Heusch, Y. Rodriguez, and S. Marcel*. **Local Binary Patterns as an Image Preprocessing for Face Authentication**. In IEEE International Conference on Automatic Face and Gesture Recognition (AFGR), 2006.
.. .. [HRM06] *G. Heusch, Y. Rodriguez, and S. Marcel*. **Local Binary Patterns as an Image Preprocessing for Face Authentication**. In IEEE International Conference on Automatic Face and Gesture Recognition (AFGR), 2006.
.. [WFK97] *L. Wiskott, J.-M. Fellous, N. Krüger and C.v.d. Malsburg*. **Face recognition by elastic bunch graph matching**. IEEE Transactions on Pattern Analysis and Machine Intelligence, 19:775-779, 1997.
.. [ZSQ+09] *W. Zhang, S. Shan, L. Qing, X. Chen and W. Gao*. **Are Gabor phases really useless for face recognition?** Pattern Analysis & Applications, 12:301-307, 2009.
.. [ZSQ09] *W. Zhang, S. Shan, L. Qing, X. Chen and W. Gao*. **Are Gabor phases really useless for face recognition?** Pattern Analysis & Applications, 12:301-307, 2009.
.. [GW09] *M. Günther and R.P. Würtz*. **Face detection and recognition using maximum likelihood classifiers on Gabor graphs**. International Journal of Pattern Recognition and Artificial Intelligence, 23(3):433-461, 2009.
.. [GWM12] *M. Günther, R. Wallace and S. Marcel*. **An Open Source Framework for Standardized Comparisons of Face Recognition Algorithms**. Computer Vision - ECCV 2012. Workshops and Demonstrations, LNCS, 7585, 547-556, 2012.
.. .. [GWM12] *M. Günther, R. Wallace and S. Marcel*. **An Open Source Framework for Standardized Comparisons of Face Recognition Algorithms**. Computer Vision - ECCV 2012. Workshops and Demonstrations, LNCS, 7585, 547-556, 2012.
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