2015
DOI: 10.1109/tip.2015.2416634
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Robust Representation and Recognition of Facial Emotions Using Extreme Sparse Learning

Abstract: Recognition of natural emotions from human faces is an interesting topic with a wide range of potential applications, such as human-computer interaction, automated tutoring systems, image and video retrieval, smart environments, and driver warning systems. Traditionally, facial emotion recognition systems have been evaluated on laboratory controlled data, which is not representative of the environment faced in real-world applications. To robustly recognize the facial emotions in real-world natural situations, … Show more

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Cited by 134 publications
(68 citation statements)
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“…Several techniques have been proposed to solve the problem defined by Eq. , and can be divided into two broad classes: (a)The first group is based on optimization techniques that iterate between a representative set of sparse coefficient (estimated typically via Orthogonal Matching Pursuit, Basis Pursuit, Iterative Hard Thresholding, and etc gradient descent, and etc.).…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Several techniques have been proposed to solve the problem defined by Eq. , and can be divided into two broad classes: (a)The first group is based on optimization techniques that iterate between a representative set of sparse coefficient (estimated typically via Orthogonal Matching Pursuit, Basis Pursuit, Iterative Hard Thresholding, and etc gradient descent, and etc.).…”
Section: Methodsmentioning
confidence: 99%
“…(a)The first group is based on optimization techniques that iterate between a representative set of sparse coefficient (estimated typically via Orthogonal Matching Pursuit, 28 Basis Pursuit, 29 Iterative Hard Thresholding, 30 and etc. 31 ) and update of the dictionary using known sparse coefficients (utilizing algorithms such as K-Singular Value Decomposition, 32 gradient descent, 33 and etc.). In these techniques, the stopping criterion is defined by assuming knowledge of the noise variance or sparsity level of sparse coefficients a.…”
Section: A4 Dictionary Learning Based Inpaintingmentioning
confidence: 99%
“…Both the above systems work only on static images. Seyedehsamaneh et.al [9] had proposed a system wherein the images are detected using optical flow method with Extreme Sparse Learning. This in our case of detecting only the negative emotions seems to be complex.…”
Section: Emotion Detectorsmentioning
confidence: 99%
“…The presence of emotions in the query image is detected by using an Extreme Sparse Learning (ESL) method [28] which uses a spatio-temporal descriptor to handle the pose invariant features. The spatio-temporal descriptor has been generated by means of concatenating the spatio-temporal features including facial expansion and contraction, local spins around the axis of facial muscles, projections, rotations etc.…”
Section: Robust Auxiliary Dictionary Learningmentioning
confidence: 99%