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Papers/SSAMBA: Self-Supervised Audio Representation Learning with...

SSAMBA: Self-Supervised Audio Representation Learning with Mamba State Space Model

Siavash Shams, Sukru Samet Dindar, Xilin Jiang, Nima Mesgarani

2024-05-20Keyword SpottingSpeaker IdentificationRepresentation LearningAudio Classification
PaperPDFCode(official)

Abstract

Transformers have revolutionized deep learning across various tasks, including audio representation learning, due to their powerful modeling capabilities. However, they often suffer from quadratic complexity in both GPU memory usage and computational inference time, affecting their efficiency. Recently, state space models (SSMs) like Mamba have emerged as a promising alternative, offering a more efficient approach by avoiding these complexities. Given these advantages, we explore the potential of SSM-based models in audio tasks. In this paper, we introduce Self-Supervised Audio Mamba (SSAMBA), the first self-supervised, attention-free, and SSM-based model for audio representation learning. SSAMBA leverages the bidirectional Mamba to capture complex audio patterns effectively. We incorporate a self-supervised pretraining framework that optimizes both discriminative and generative objectives, enabling the model to learn robust audio representations from large-scale, unlabeled datasets. We evaluated SSAMBA on various tasks such as audio classification, keyword spotting, and speaker identification. Our results demonstrate that SSAMBA outperforms the Self-Supervised Audio Spectrogram Transformer (SSAST) in most tasks. Notably, SSAMBA is approximately 92.7% faster in batch inference speed and 95.4% more memory-efficient than SSAST for the tiny model size with an input token size of 22k. These efficiency gains, combined with superior performance, underscore the effectiveness of SSAMBA's architectural innovation, making it a compelling choice for a wide range of audio processing applications.

Results

TaskDatasetMetricValueModel
Keyword SpottingGoogle Speech CommandsGoogle Speech Commands V1 1296.9SSAMBA
Keyword SpottingGoogle Speech CommandsGoogle Speech Commands V2 3597.4SSAMBA
Keyword SpottingGoogle Speech Commands V2 35Accuracy (10-fold)97.4SSAMBA
Speaker IdentificationVoxCeleb1Accuracy70.1SSAMBA
Speaker IdentificationVoxCeleb1Top-1 (%)70.1SSAMBA

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