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Expanding on EnCLAP with Auxiliary Retrieval Model for Automated Audio Captioning

2024-09-02Unverified0· sign in to hype

Jaeyeon Kim, JaeYoon Jung, Minjeong Jeon, Sang Hoon Woo, Jinjoo Lee

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Abstract

In this technical report, we describe our submission to DCASE2024 Challenge Task6 (Automated Audio Captioning) and Task8 (Language-based Audio Retrieval). We develop our approach building upon the EnCLAP audio captioning framework and optimizing it for Task6 of the challenge. Notably, we outline the changes in the underlying components and the incorporation of the reranking process. Additionally, we submit a supplementary retriever model, a byproduct of our modified framework, to Task8. Our proposed systems achieve FENSE score of 0.542 on Task6 and mAP@10 score of 0.386 on Task8, significantly outperforming the baseline models.

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