Exploiting multi-cnn features in cnn-rnn based dimensional emotion recognition on the omg in-the-wild dataset

D Kollias, S Zafeiriou - IEEE Transactions on Affective …, 2020 - ieeexplore.ieee.org
IEEE Transactions on Affective Computing, 2020ieeexplore.ieee.org
This article presents a novel CNN-RNN based approach, which exploits multiple CNN
features for dimensional emotion recognition in-the-wild, utilizing the One-Minute Gradual-
Emotion (OMG-Emotion) dataset. Our approach includes first pre-training with the relevant
and large in size, Aff-Wild and Aff-Wild2 emotion databases. Low-, mid-and high-level
features are extracted from the trained CNN component and are exploited by RNN subnets
in a multi-task framework. Their outputs constitute an intermediate level prediction; final …
This article presents a novel CNN-RNN based approach, which exploits multiple CNN features for dimensional emotion recognition in-the-wild, utilizing the One-Minute Gradual-Emotion (OMG-Emotion) dataset. Our approach includes first pre-training with the relevant and large in size, Aff-Wild and Aff-Wild2 emotion databases. Low-, mid- and high-level features are extracted from the trained CNN component and are exploited by RNN subnets in a multi-task framework. Their outputs constitute an intermediate level prediction; final estimates are obtained as the mean or median values of these predictions. Fusion of the networks is also examined for boosting the obtained performance, at Decision-, or at Model-level; in the latter case a RNN was used for the fusion. Our approach, although using only the visual modality, outperformed state-of-the-art methods that utilized audio and visual modalities. Some of our developments have been submitted to the OMG-Emotion Challenge, ranking second among the technologies which used only visual information for valence estimation; ranking third overall. Through extensive experimentation, we further show that arousal estimation is greatly improved when low-level features are combined with high-level ones.
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