4.6 Article

Multi-Modal Residual Perceptron Network for Audio-Video Emotion Recognition

期刊

SENSORS
卷 21, 期 16, 页码 -

出版社

MDPI
DOI: 10.3390/s21165452

关键词

emotion recognition; deep neural network; multi-modal classifier; deep features fusion; audio sensor; video sensor

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The study investigates the application of deep neural networks in audio-video emotion recognition, proposing a multi-modal residual perceptron network that improves recognition rates. By utilizing end-to-end learning and time augmentation techniques, it achieves outstanding recognition results across various datasets including emotional speech and song.
Emotion recognition is an important research field for human-computer interaction. Audio-video emotion recognition is now attacked with deep neural network modeling tools. In published papers, as a rule, the authors show only cases of the superiority in multi-modality over audio-only or video-only modality. However, there are cases of superiority in uni-modality that can be found. In our research, we hypothesize that for fuzzy categories of emotional events, the within-modal and inter-modal noisy information represented indirectly in the parameters of the modeling neural network impedes better performance in the existing late fusion and end-to-end multi-modal network training strategies. To take advantage of and overcome the deficiencies in both solutions, we define a multi-modal residual perceptron network which performs end-to-end learning from multi-modal network branches, generalizing better multi-modal feature representation. For the proposed multi-modal residual perceptron network and the novel time augmentation for streaming digital movies, the state-of-the-art average recognition rate was improved to 91.4% for the Ryerson Audio-Visual Database of Emotional Speech and Song dataset and to 83.15% for the Crowd-Sourced Emotional Multi Modal Actors dataset. Moreover, the multi-modal residual perceptron network concept shows its potential for multi-modal applications dealing with signal sources not only of optical and acoustical types.

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