增强音频问题解答中的时态理解,建立大型音频语言模型

Arvind Krishna Sridhar, Yinyi Guo, Erik Visser
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引用次数: 0

摘要

音频问题解答任务包括音频事件分类、音频字幕和开放式推理。最近,音频问题解答因大型音频语言模型的出现而备受关注。目前的文献侧重于通过投影模块将音频编码器与纯文本大语言模型集成在一起,从而构建大语言模型。虽然大型音频语言模型在一般音频理解方面表现出色,但在时态推理方面却受到限制,这可能会阻碍其商业应用和设备部署。本文旨在解决音频时态推理中的这些挑战和局限性。首先,我们介绍了一种数据增强技术,利用 LLM 生成可靠的音频时态问题和答案。其次,我们提出了一种持续微调的课程学习策略,在不影响微调任务性能的前提下实现时空推理的专业化。最后,我们在 LLM 的辅助下开发了一种可靠、透明的自动度量方法,用于智能测量大型音频语言模型的回答与地面真实数据之间的相关性。我们在公共音频基准数据集上使用 SOTA LALM 展示了我们提出的技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Temporal Understanding in Audio Question Answering for Large Audio Language Models
The Audio Question Answering task includes audio event classification, audio captioning, and open ended reasoning. Recently, Audio Question Answering has garnered attention due to the advent of Large Audio Language Models. Current literature focuses on constructing LALMs by integrating audio encoders with text only Large Language Models through a projection module. While Large Audio Language Models excel in general audio understanding, they are limited in temporal reasoning which may hinder their commercial applications and on device deployment. This paper addresses these challenges and limitations in audio temporal reasoning. First, we introduce a data augmentation technique for generating reliable audio temporal questions and answers using an LLM. Second, we propose a continued finetuning curriculum learning strategy to specialize in temporal reasoning without compromising performance on finetuned tasks. Finally, we develop a reliable and transparent automated metric, assisted by an LLM, to measure the correlation between Large Audio Language Model responses and ground truth data intelligently. We demonstrate the effectiveness of our proposed techniques using SOTA LALMs on public audio benchmark datasets.
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