摘要
Currently, Graph Neural Networks have been extended to the field of speech signal processing. It is the more compact and flexible way to represent speech sequences by graphs. However, the structures of the relationships in recent studies are tend to be relatively uncomplicated. Moreover, the graph convolution module exhibits limitations that impede its adaptability to intricate application scenarios. In this study, we establish the speech-graph using feature similarity and introduce a novel architecture for graph neural network that leverages an LSTM aggregator and weighted pooling. The unweighted accuracy of 65.39% and the weighted accuracy of 71.83% are obtained on the IEMOCAP dataset, achieving the performance comparable to or better than existing graph baselines. This method can improve the interpretability of the model to some extent, and identify speech emotion features effectively.
原文 | English |
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文章編號 | 40 |
期刊 | Eurasip Journal on Audio, Speech, and Music Processing |
卷 | 2023 |
發行號 | 1 |
DOIs | |
出版狀態 | Published - 12月 2023 |
指紋
深入研究「Speech emotion recognition based on Graph-LSTM neural network」主題。共同形成了獨特的指紋。新聞/媒體
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New Findings in Networks Described from Faculty of Applied Sciences (Speech emotion recognition based on Graph-LSTM neural network)
YAPENG WANG, SIO KEI IM & XU YANG
1/11/23
1 的項目 媒體報導
新聞/媒體: Press/Media