2013
DOI: 10.1016/j.ijleo.2013.05.076
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Robust automatic facial expression detection method based on sparse representation plus LBP map

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Cited by 17 publications
(13 citation statements)
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References 24 publications
(49 reference statements)
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“…Unlike the above work that applied SRC directly on raw image pixels, studies also exploited other feature descriptors. Ouyang et al [2013] suggested using Local Binary Pattern (LBP) maps that generally have good robustness against illumination variations. Fusion of LBP maps and SRC was found to outperform SRC under non-occlusion, occluded eyes, and partial corruption conditions on the CK database.…”
Section: Sparse Representation Approachmentioning
confidence: 99%
See 1 more Smart Citation
“…Unlike the above work that applied SRC directly on raw image pixels, studies also exploited other feature descriptors. Ouyang et al [2013] suggested using Local Binary Pattern (LBP) maps that generally have good robustness against illumination variations. Fusion of LBP maps and SRC was found to outperform SRC under non-occlusion, occluded eyes, and partial corruption conditions on the CK database.…”
Section: Sparse Representation Approachmentioning
confidence: 99%
“…The training dictionary needs not only sufficient information to effectively represent the test data, but also abundant characteristics to reduce the correlations of training samples from different classes [Ouyang, et al 2013]. To ensure accurate feature extraction, the approaches require precise face location, alignment and normalization, which are done primarily manually in existing work [Cotter 2010a], [Cotter 2010b], [Zhang, et al 2012], [Ouyang, et al 2013]. One important factor in the use of SRC is to choose a proper type of feature descriptor.…”
Section: Sparse Representation Approachmentioning
confidence: 99%
“…Sparse representation works well in applications where the original signal y needs to be reconstructed as accurately as possible, such as denoising, image compression, and spectral estimation. Literature [20] successfully used the sparse representation to automatically recognize facial expression. However, for applications like feature selection, it is more important that the representation is discriminative for the given signal classes than a small reconstruction error.…”
Section: Feature Selection For Multivariate Measuresmentioning
confidence: 99%
“…At the first step, features are extracted from images; whereas at the second one, the images are classified into seven groups either by learning methods like neural networks or by classifiers such as K-NN and SVM. Some feature extraction methods, which have been used in the literature, are Gabor features [2][3][4], Eigen faces [5] and LBP features [6][7][8][9][10]. Among all these methods, LBP features seem to be computationally simple, but effective features which are also known as rotation and gray scale invariant texture descriptors [11].…”
Section: Introductionmentioning
confidence: 99%
“…Later, they have enhanced their experimental results in [9] by applying their proposed approach on various datasets, and also using several classifiers and learning methods. Moreover, Ouyang et al in [10] have made use of LBP texture feature to produce an LBP map and besides, they utilized sparse representation based classification (SRC) method for facial expression recognition.…”
Section: Introductionmentioning
confidence: 99%