Multiple Spatio-temporal Feature Learning for Video-based Emotion Recognition in the Wild

Author(s):  
Cheng Lu ◽  
Wenming Zheng ◽  
Chaolong Li ◽  
Chuangao Tang ◽  
Suyuan Liu ◽  
...  
2018 ◽  
Vol 174 ◽  
pp. 33-42 ◽  
Author(s):  
Dung Nguyen ◽  
Kien Nguyen ◽  
Sridha Sridharan ◽  
David Dean ◽  
Clinton Fookes

2021 ◽  
Author(s):  
Bo Peng ◽  
Jianjun Lei ◽  
Huazhu Fu ◽  
Yalong Jia ◽  
Zongqian Zhang ◽  
...  

Sensors ◽  
2021 ◽  
Vol 21 (7) ◽  
pp. 2344
Author(s):  
Nhu-Tai Do ◽  
Soo-Hyung Kim ◽  
Hyung-Jeong Yang ◽  
Guee-Sang Lee ◽  
Soonja Yeom

Emotion recognition plays an important role in human–computer interactions. Recent studies have focused on video emotion recognition in the wild and have run into difficulties related to occlusion, illumination, complex behavior over time, and auditory cues. State-of-the-art methods use multiple modalities, such as frame-level, spatiotemporal, and audio approaches. However, such methods have difficulties in exploiting long-term dependencies in temporal information, capturing contextual information, and integrating multi-modal information. In this paper, we introduce a multi-modal flexible system for video-based emotion recognition in the wild. Our system tracks and votes on significant faces corresponding to persons of interest in a video to classify seven basic emotions. The key contribution of this study is that it proposes the use of face feature extraction with context-aware and statistical information for emotion recognition. We also build two model architectures to effectively exploit long-term dependencies in temporal information with a temporal-pyramid model and a spatiotemporal model with “Conv2D+LSTM+3DCNN+Classify” architecture. Finally, we propose the best selection ensemble to improve the accuracy of multi-modal fusion. The best selection ensemble selects the best combination from spatiotemporal and temporal-pyramid models to achieve the best accuracy for classifying the seven basic emotions. In our experiment, we take benchmark measurement on the AFEW dataset with high accuracy.


2020 ◽  
Vol 29 ◽  
pp. 9084-9098
Author(s):  
Yin Bi ◽  
Aaron Chadha ◽  
Alhabib Abbas ◽  
Eirina Bourtsoulatze ◽  
Yiannis Andreopoulos

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