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arxiv: 2505.19663 · v2 · pith:SFRT4R6J · submitted 2025-05-26 · cs.SD · cs.AI· cs.CR· cs.LG· eess.AS

A Comprehensive Real-World Assessment of Audio Watermarking Algorithms: Will They Survive Neural Codecs?

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classification cs.SD cs.AIcs.CRcs.LGeess.AS
keywords audiowatermarkingmethodsalgorithmsbenchmarkcomprehensivecompressiondistortions
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We introduce the Robust Audio Watermarking Benchmark (RAW-Bench), a benchmark for evaluating deep learning-based audio watermarking methods with standardized and systematic comparisons. To simulate real-world usage, we introduce a comprehensive audio attack pipeline with various distortions such as compression, background noise, and reverberation, along with a diverse test dataset including speech, environmental sounds, and music recordings. Evaluating four existing watermarking methods on RAW-bench reveals two main insights: (i) neural compression techniques pose the most significant challenge, even when algorithms are trained with such compressions; and (ii) training with audio attacks generally improves robustness, although it is insufficient in some cases. Furthermore, we find that specific distortions, such as polarity inversion, time stretching, or reverb, seriously affect certain methods. The evaluation framework is accessible at github.com/SonyResearch/raw_bench.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. LambdaMark: Semantic Audio Watermarking for Robustness and Radioactivity

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    LambdaMark is the first generic radioactive audio watermark that injects multi-bit messages into semantic latent representations, achieving robustness to distortions and removal attacks even after downstream model finetuning.

  2. Who Gets Flagged? The Pluralistic Evaluation Gap in AI Content Watermarking

    cs.CY 2026-04 conditional novelty 6.0

    AI content watermarking exhibits detection disparities across languages, cultures, and demographics due to content-dependent signal properties, with benchmarks failing to disaggregate performance and watermarking held...

  3. HarmonicAttack: An Adaptive Cross-Domain Audio Watermark Removal

    cs.SD 2025-11 conditional novelty 6.0

    A black-box audio watermark removal attack trained on limited samples that generalizes across datasets and watermark schemes with high attack success rates.