Ensemble Convolution Neural Network for Robust Video Emotion Recognition Using Deep Semantics

被引:0
|
作者
Smitha E.S. [1 ]
Sendhilkumar S. [1 ]
Mahalakshmi G.S. [2 ]
机构
[1] Department of Information Science & Technology, College of Engineering, Anna University, Tamilnadu, Chennai
[2] Department of Computer Science & Engineering, College of Engineering, Anna University, Tamilnadu, Chennai
关键词
Convolution neural network - Emotion classification - Emotion recognition - Ensemble methods - Face alignment - Face occlusion - Face shapes - Facial feature - Human emotion - Human emotion recognition;
D O I
10.1155/2023/6859284
中图分类号
学科分类号
摘要
Human emotion recognition from videos involves accurately interpreting facial features, including face alignment, occlusion, and shape illumination problems. Dynamic emotion recognition is more important. The situation becomes more challenging with multiple persons and the speedy movement of faces. In this work, the ensemble max rule method is proposed. For obtaining the results of the ensemble method, three primary forms, such as CNNHOG-KLT, CNNHaar-SVM, and CNNPATCH are developed parallel to each other to detect the human emotions from the extracted vital frames from videos. The first method uses HoG and KLT algorithms for face detection and tracking. The second method uses Haar cascade and SVM to detect the face. Template matching is used for face detection in the third method. Convolution neural network (CNN) is used for emotion classification in CNNHOG-KLT and CNNHaar-SVM. To handle occluded images, a patch-based CNN is introduced for emotion recognition in CNNPATCH. Finally, all three methods are ensembles based on the Max rule. The CNNENSEMBLE for emotion classification results in 92.07% recognition accuracy by considering both occluded and nonoccluded facial videos. © 2023 E. S. Smitha et al.
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