ASAISDMay 17, 2025

Revisiting SSL for sound event detection: complementary fusion and adaptive post-processing

arXiv:2505.11889v2h-index: 3J King Saud Univ Comput Inf Sci
Originality Incremental advance
AI Analysis

This work addresses sound event detection for audio processing applications, offering incremental improvements through model fusion and post-processing.

The study tackled sound event detection by systematically evaluating and fusing self-supervised learning models, finding that dual-modal fusion like CRNN+BEATs+WavLM yields complementary gains and an adaptive post-processing method improves PSDS1 by up to 4%.

Self-supervised learning (SSL) models offer powerful representations for sound event detection (SED), yet their synergistic potential remains underexplored. This study systematically evaluates state-of-the-art SSL models to guide optimal model selection and integration for SED. We propose a framework that combines heterogeneous SSL representations (e.g., BEATs, HuBERT, WavLM) through three fusion strategies: individual SSL embedding integration, dual-modal fusion, and full aggregation. Experiments on the DCASE 2023 Task 4 Challenge reveal that dual-modal fusion (e.g., CRNN+BEATs+WavLM) achieves complementary performance gains, while CRNN+BEATs alone delivers the best results among individual SSL models. We further introduce normalized sound event bounding boxes (nSEBBs), an adaptive post-processing method that dynamically adjusts event boundary predictions, improving PSDS1 by up to 4% for standalone SSL models. These findings highlight the compatibility and complementarity of SSL architectures, providing guidance for task-specific fusion and robust SED system design.

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