2021
DOI: 10.1049/ipr2.12118
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A hybrid feature descriptor with Jaya optimised least squares SVM for facial expression recognition

Abstract: Facial expression recognition has been a long‐standing problem in the field of computer vision. This paper proposes a new simple scheme for effective recognition of facial expressions based on a hybrid feature descriptor and an improved classifier. Inspired by the success of stationary wavelet transform in many computer vision tasks, stationary wavelet transform is first employed on the pre‐processed face image. The pyramid of histograms of orientation gradient features is then computed from the low‐frequency … Show more

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Cited by 10 publications
(6 citation statements)
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“…This fully utilizes the fact that the human eye is more sensitive to brightness changes and relatively less sensitive to color changes. Therefore, the study adopts the Ycbcr color space method to extract images of gesture skin regions [17]. Although Ycbcr is not an absolute color space, it is a method of encoding RGB information.…”
Section: A Gesture Detection Model Based On Ycbcr and Cnnmentioning
confidence: 99%
“…This fully utilizes the fact that the human eye is more sensitive to brightness changes and relatively less sensitive to color changes. Therefore, the study adopts the Ycbcr color space method to extract images of gesture skin regions [17]. Although Ycbcr is not an absolute color space, it is a method of encoding RGB information.…”
Section: A Gesture Detection Model Based On Ycbcr and Cnnmentioning
confidence: 99%
“…Using DCNN features, Mayya et al [18] proposed a new method for automated facial expression recognition. Kar et al [19] proposed a new simple and effective facial expression recognition method based on mixed feature descriptors and improved classifiers. In a new deep learning framework presented by Rajan et al [20], convolutional neural network (CNN) is combined with longterm and short-term memory (LSTM) units for real-time facial expression recognition.…”
Section: Related Workmentioning
confidence: 99%
“…Kar et al. [19] proposed a new simple and effective facial expression recognition method based on mixed feature descriptors and improved classifiers. In a new deep learning framework presented by Rajan et al.…”
Section: Related Workmentioning
confidence: 99%
“…SVM is a supervised learning method in the field of machine learning. In the past 20 years, it is one of the most influential machine learning algorithms [25–27]. Equation () shows the original problem of SVM: maxω,bminxi0true||ωTxi+b‖‖ωyi(ωTxi+b)>0$$\begin{equation}\left\{ { \def\eqcellsep{&}\begin{array}{@{}*{1}{c}@{}} {\mathop {{\rm{max}}}\limits_{\omega ,b} \mathop {\min }\limits_{{x}_i} \dfrac{{\left| {{\omega }^T{x}_i + b} \right|}}{{\left\| \omega \right\|}}}\\[9pt] {{y}_i({\omega }^T{x}_i + b) > 0} \end{array} } \right.\end{equation}$$where wTx+b${w}^Tx + b$ represents the hyper‐plane, y i is the sample label value, y i = 1 when the sample is positive and y i = −1 when the sample is negative.…”
Section: Svm Target Detection Algorithmmentioning
confidence: 99%
“…SVM is a supervised learning method in the field of machine learning. In the past 20 years, it is one of the most influential machine learning algorithms [25][26][27]. Equation (15) shows the original problem of SVM: In practice, SVM optimizes the classification problem by error penalty factor C and kernel function, as shown in Equation (16).…”
Section: Support Vector Machinementioning
confidence: 99%