Deep Learning for Spatio-Temporal Modeling of Dynamic Spontaneous Emotions

被引:25
|
作者
Al Chanti, Dawood [1 ,2 ]
Caplier, Alice [1 ,2 ]
机构
[1] Univ Grenoble Alpes, CNRS, Grenoble INP, F-38000 Grenoble, France
[2] Univ Grenoble Alpes, Inst Engn, GIPSA Lab, Image & Signal Proc Dept, F-38000 Grenoble, France
关键词
Spatiotemporal phenomena; Visualization; Face recognition; Face; Videos; Machine learning; Computational modeling; 3D-CNN; ConvLSTM; deep learning; dynamic emotion; facial expression; SPP-net; spatiotemporal features; FACIAL EXPRESSION RECOGNITION;
D O I
10.1109/TAFFC.2018.2873600
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Facial expressions involve dynamic morphological changes in a face, conveying information about the expresser's feelings. Each emotion has a specific spatial deformation over the face and temporal profile with distinct time segments. We aim at modeling the human dynamic emotional behavior by taking into consideration the visual content of the face and its evolution. But emotions can both speed-up or slow-down, therefore it is important to incorporate information from the local neighborhood frames (short-term dependencies) and the global setting (long-term dependencies) to summarize the segment context despite of its time variations. A 3D-Convolutional Neural Networks (3D-CNN) is used to learn early local spatiotemporal features. The 3D-CNN is designed to capture subtle spatiotemporal changes that may occur on the face. Then, a Convolutional-Long-Short-Term-Memory (ConvLSTM) network is designed to learn semantic information by taking into account longer spatiotemporal dependencies. The ConvLSTM network helps considering the global visual saliency of the expression. That is locating and learning features in space and time that stand out from their local neighbors in order to signify distinctive facial expression features along the entire sequence. Non-variant representations based on aggregating global spatiotemporal features at increasingly fine resolutions are then done using a weighted Spatial Pyramid Pooling layer.
引用
收藏
页码:363 / 376
页数:14
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