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CL4AC: A Contrastive Loss for Audio Captioning

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arxiv 2107.09990 v3 pith:2EFT6OAP submitted 2021-07-21 eess.AS cs.AIcs.SD

CL4AC: A Contrastive Loss for Audio Captioning

classification eess.AS cs.AIcs.SD
keywords audiocaptioningcl4acdataproblemrepresentationalignmentaudio-text
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automated Audio captioning (AAC) is a cross-modal translation task that aims to use natural language to describe the content of an audio clip. As shown in the submissions received for Task 6 of the DCASE 2021 Challenges, this problem has received increasing interest in the community. The existing AAC systems are usually based on an encoder-decoder architecture, where the audio signal is encoded into a latent representation, and aligned with its corresponding text descriptions, then a decoder is used to generate the captions. However, training of an AAC system often encounters the problem of data scarcity, which may lead to inaccurate representation and audio-text alignment. To address this problem, we propose a novel encoder-decoder framework called Contrastive Loss for Audio Captioning (CL4AC). In CL4AC, the self-supervision signals derived from the original audio-text paired data are used to exploit the correspondences between audio and texts by contrasting samples, which can improve the quality of latent representation and the alignment between audio and texts, while trained with limited data. Experiments are performed on the Clotho dataset to show the effectiveness of our proposed approach.

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