SDLGJan 12

SEE: Signal Embedding Energy for Quantifying Noise Interference in Large Audio Language Models

arXiv:2601.07331v13 citationsh-index: 9
AI Analysis

This addresses robustness issues for LALMs in real-world deployments like in-car assistants and online meetings, offering a novel quantitative approach where previous studies relied on intuition.

The paper tackles the problem of noise interference in Large Audio Language Models (LALMs) by introducing Signal Embedding Energy (SEE) to quantify noise impact, achieving a correlation of 0.98 with model performance and proposing a mitigation strategy that outperforms existing denoising methods.

Large Audio Language Models (LALMs) have been widely applied in real-time scenarios, such as in-car assistants and online meeting comprehension. In practice, audio inputs are often corrupted by device and environmental noise, leading to performance degradation. However, existing LALM studies on noise lack quantitative analysis and rely mainly on intuition and empirical observation, thus failing to understand practical robustness. To address this issue, we introduce Signal Embedding Energy (SEE), a method for quantifying the impact of noise intensity on LALM inputs, enabling the differentiation of LALM robustness in real-world deployments. SEE introduces a perspective based on structured activation subspaces derived from the model's internal representations, which more accurately captures its perception of noise than raw audio features. Across experiments, SEE exhibits a strong correlation with LALM performance, achieving a correlation of 0.98. Surprisingly, traditional audio denoising methods are only marginally effective for LALMs, and, in some cases, even increase SEE and impair performance. This suggests a mismatch between speech-centric denoising objectives and the noise sensitivity of modern LALMs. Therefore, we propose a mitigation strategy derived from SEE to denoise LALM inputs, outperforming existing denoising methods. This paper introduces a novel metric for noise quantification in LALMs, providing guidance for robustness improvements in real-world deployments.

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