SDCVMar 22, 2025

Leveraging Audio Representations for Vibration-Based Crowd Monitoring in Stadiums

arXiv:2503.17646v1h-index: 9
Originality Incremental advance
AI Analysis

This addresses public safety and audience experience in sports stadiums with a less disruptive method, though it is incremental as it adapts existing audio techniques to a new modality.

The paper tackles the problem of crowd monitoring in stadiums by sensing floor vibrations to predict crowd behavior, achieving up to a 5.8x error reduction by pre-training on audio data.

Crowd monitoring in sports stadiums is important to enhance public safety and improve the audience experience. Existing approaches mainly rely on cameras and microphones, which can cause significant disturbances and often raise privacy concerns. In this paper, we sense floor vibration, which provides a less disruptive and more non-intrusive way of crowd sensing, to predict crowd behavior. However, since the vibration-based crowd monitoring approach is newly developed, one main challenge is the lack of training data due to sports stadiums being large public spaces with complex physical activities. In this paper, we present ViLA (Vibration Leverage Audio), a vibration-based method that reduces the dependency on labeled data by pre-training with unlabeled cross-modality data. ViLA is first pre-trained on audio data in an unsupervised manner and then fine-tuned with a minimal amount of in-domain vibration data. By leveraging publicly available audio datasets, ViLA learns the wave behaviors from audio and then adapts the representation to vibration, reducing the reliance on domain-specific vibration data. Our real-world experiments demonstrate that pre-training the vibration model using publicly available audio data (YouTube8M) achieved up to a 5.8x error reduction compared to the model without audio pre-training.

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