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Zero-shot audio captioning with audio-language model guidance and audio context keywords

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arxiv 2311.08396 v1 pith:HYYZ4ZSA submitted 2023-11-14 eess.AS cs.AIcs.CLcs.SD

Zero-shot audio captioning with audio-language model guidance and audio context keywords

classification eess.AS cs.AIcs.CLcs.SD
keywords audiocaptioningmodeltextzero-shotcontentframeworklanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Zero-shot audio captioning aims at automatically generating descriptive textual captions for audio content without prior training for this task. Different from speech recognition which translates audio content that contains spoken language into text, audio captioning is commonly concerned with ambient sounds, or sounds produced by a human performing an action. Inspired by zero-shot image captioning methods, we propose ZerAuCap, a novel framework for summarising such general audio signals in a text caption without requiring task-specific training. In particular, our framework exploits a pre-trained large language model (LLM) for generating the text which is guided by a pre-trained audio-language model to produce captions that describe the audio content. Additionally, we use audio context keywords that prompt the language model to generate text that is broadly relevant to sounds. Our proposed framework achieves state-of-the-art results in zero-shot audio captioning on the AudioCaps and Clotho datasets. Our code is available at https://github.com/ExplainableML/ZerAuCap.

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