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Bridging Language Gaps in Audio-Text Retrieval

Authors :
Yan, Zhiyong
Dinkel, Heinrich
Wang, Yongqing
Liu, Jizhong
Zhang, Junbo
Wang, Yujun
Wang, Bin
Publication Year :
2024

Abstract

Audio-text retrieval is a challenging task, requiring the search for an audio clip or a text caption within a database. The predominant focus of existing research on English descriptions poses a limitation on the applicability of such models, given the abundance of non-English content in real-world data. To address these linguistic disparities, we propose a language enhancement (LE), using a multilingual text encoder (SONAR) to encode the text data with language-specific information. Additionally, we optimize the audio encoder through the application of consistent ensemble distillation (CED), enhancing support for variable-length audio-text retrieval. Our methodology excels in English audio-text retrieval, demonstrating state-of-the-art (SOTA) performance on commonly used datasets such as AudioCaps and Clotho. Simultaneously, the approach exhibits proficiency in retrieving content in seven other languages with only 10% of additional language-enhanced training data, yielding promising results. The source code is publicly available https://github.com/zyyan4/ml-clap.<br />Comment: interspeech2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.07012
Document Type :
Working Paper