Audio Mamba: Bidirectional State Space Model For Audio Representation Learning
2024 Β· Mehmet Hamza Erol, Arda Senocak, Jiu Feng, et al.
Abstract
Transformers have rapidly become the preferred choice for audio classification, surpassing methods based on CNNs. However, Audio Spectrogram Transformers (ASTs) exhibit quadratic scaling due to self-attention. The removal of this quadratic self-attention cost presents an appealing direction. Recently, state space models (SSMs), such as Mamba, have demonstrated potential in language and vision tasks in this regard. In this study, we explore whether reliance on self-attention is necessary for audio classification tasks. By introducing Audio Mamba (AuM), the first self-attention-free, purely SSM-based model for audio classification, we aim to address this question. We evaluate AuM on various audio datasets - comprising six different benchmarks - where it achieves comparable or better performance compared to well-established AST model.
Authors
(none)
Tags
Stats
Related papers
- Audio Mamba: Selective State Spaces For Self-supervised Audio Representations (2024)9.23
- SSAMBA: Self-supervised Audio Representation Learning With Mamba State Space Model (2024)0.00
- Dual-path Mamba: Short And Long-term Bidirectional Selective Structured State Space Models For Speech Separation (2024)4.12
- SSAST: Self-supervised Audio Spectrogram Transformer (2021)17.61
- SAM: A Mamba-2 State-space Audio-language Model (2025)0.00
- Samba-asr: State-of-the-art Speech Recognition Leveraging Structured State-space Models (2025)0.00
- MAST: Multiscale Audio Spectrogram Transformers (2022)4.52
- Mamba-based Decoder-only Approach With Bidirectional Speech Modeling For Speech Recognition (2024)0.00