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Issue title: Special Issue on Deep Neural Networks for Digital Media Algorithms
Subtitle: 2D Face Geometry and 3D Face Local Motion versus Deep Neural Features
Guest editors: Wladyslaw SkarbekProf. and Yu-Dong ZhangProf.
Article type: Research Article
Authors: Pilarczyk, Rafał; * | Chang, Xin | Skarbek, Władysław
Affiliations: Institute of Radioelectronics and Multimedia Technology, Faculty of Electronics and Information Technology, Warsaw University of Technology, Warsaw, Poland. [email protected]
Correspondence: [*] Address for correspondence: Institute of Radioelectronics and Multimedia Technology, Faculty of Electronics and Information Technology, Warsaw University of Technology, Nowowiejska 15/19, 00-665 Warsaw, Poland
Abstract: Several computer algorithms for recognition of visible human emotions are compared at the web camera scenario using CNN/MMOD face detector. The recognition refers to four face expressions: smile, surprise, anger, and neutral. At the feature extraction stage, the following three concepts of face description are confronted: (a) static 2D face geometry represented by its 68 characteristic landmarks (FP68); (b) dynamic 3D geometry defined by motion parameters for eight distinguished face parts (denoted as AU8) of personalized Candide-3 model; (c) static 2D visual description as 2D array of gray scale pixels (known as facial raw image). At the classification stage, the performance of two major models are analyzed: (a) support vector machine (SVM) with kernel options; (b) convolutional neural network (CNN) with variety of relevant tensor processing layers and blocks of them. The models are trained for frontal views of human faces while they are tested for arbitrary head poses. For geometric features, the success rate (accuracy) indicate nearly triple increase of performance of CNN with respect to SVM classifiers. For raw images, CNN outperforms in accuracy its best geometric counterpart (AU/CNN) by about 30 percent while the best SVM solutions are inferior. For F-score the high advantage of raw/CNN over geometric/CNN and geometric/SVM is observed, as well. We conclude that contrary to CNN based emotion classifiers, the generalization capability wrt human head pose for SVM based emotion classifiers, is worse too.
Keywords: face expression recognition, face landmarks, facial action units, SVM classifier, CNN classifier
DOI: 10.3233/FI-2019-1833
Journal: Fundamenta Informaticae, vol. 168, no. 2-4, pp. 287-310, 2019
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