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Dual Transformer Decoder based Features Fusion Network for Automated Audio Captioning

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arxiv 2305.18753 v1 pith:UUX4HMX5 submitted 2023-05-30 eess.AS cs.SD

Dual Transformer Decoder based Features Fusion Network for Automated Audio Captioning

classification eess.AS cs.SD
keywords audiohigh-dimensionalfeaturesinformationlhdffcaptioningfusionlow-
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automated audio captioning (AAC) which generates textual descriptions of audio content. Existing AAC models achieve good results but only use the high-dimensional representation of the encoder. There is always insufficient information learning of high-dimensional methods owing to high-dimensional representations having a large amount of information. In this paper, a new encoder-decoder model called the Low- and High-Dimensional Feature Fusion (LHDFF) is proposed. LHDFF uses a new PANNs encoder called Residual PANNs (RPANNs) to fuse low- and high-dimensional features. Low-dimensional features contain limited information about specific audio scenes. The fusion of low- and high-dimensional features can improve model performance by repeatedly emphasizing specific audio scene information. To fully exploit the fused features, LHDFF uses a dual transformer decoder structure to generate captions in parallel. Experimental results show that LHDFF outperforms existing audio captioning models.

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