通过预训练音频模型的低库适应性微调改进异常声音检测

Xinhu Zheng, Anbai Jiang, Bing Han, Yanmin Qian, Pingyi Fan, Jia Liu, Wei-Qiang Zhang
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引用次数: 0

摘要

通过在工业环境中应用各种人工智能(AI)技术,异常声音检测(ASD)已获得了极大的关注。虽然 ASD 系统拥有巨大的潜力,但由于数据收集困难和环境因素复杂等原因造成的泛化问题,ASD 系统很难在实际生产现场中随时部署。本文介绍了一种利用音频预训练模型的鲁棒 ASD 模型。此外,我们还研究了利用低级适应(Low-Rank Adaptation,LoRA)调整代替完全微调的影响,以解决微调数据有限的问题。我们在 DCASE2023 Task 2 数据集上进行的实验在评估集上建立了 77.75% 的新基准,与包括顶级传统卷积网络和语音预训练模型在内的以往最先进(SOTA)模型相比,显著提高了 6.48%,这证明了采用 LoRA 调整的音频预训练模型的有效性。
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Improving Anomalous Sound Detection via Low-Rank Adaptation Fine-Tuning of Pre-Trained Audio Models
Anomalous Sound Detection (ASD) has gained significant interest through the application of various Artificial Intelligence (AI) technologies in industrial settings. Though possessing great potential, ASD systems can hardly be readily deployed in real production sites due to the generalization problem, which is primarily caused by the difficulty of data collection and the complexity of environmental factors. This paper introduces a robust ASD model that leverages audio pre-trained models. Specifically, we fine-tune these models using machine operation data, employing SpecAug as a data augmentation strategy. Additionally, we investigate the impact of utilizing Low-Rank Adaptation (LoRA) tuning instead of full fine-tuning to address the problem of limited data for fine-tuning. Our experiments on the DCASE2023 Task 2 dataset establish a new benchmark of 77.75% on the evaluation set, with a significant improvement of 6.48% compared with previous state-of-the-art (SOTA) models, including top-tier traditional convolutional networks and speech pre-trained models, which demonstrates the effectiveness of audio pre-trained models with LoRA tuning. Ablation studies are also conducted to showcase the efficacy of the proposed scheme.
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