A Foundation Model for DAS Signal Recognition and Visual Prompt Tuning of the Pre-trained Model for Downstream Tasks
Kun Gui, Hongliang Ren, Shang Shi, Jin Lu, Changqiu Yu, Quanjun Cao, Guomin Gu, Qi Xuan

TL;DR
This paper introduces MAEPD, a foundational self-supervised model for DAS signal recognition that leverages visual prompt tuning, achieving high accuracy with minimal parameter updates and demonstrating robustness across various applications.
Contribution
It presents a novel Masked Autoencoder-based foundation model for DAS signals and employs visual prompt tuning for efficient downstream task adaptation.
Findings
Achieves 96.94% accuracy in indoor gait recognition.
Reduces training time by 45% compared to full fine-tuning.
Demonstrates robustness in pipeline leakage detection.
Abstract
Distributed Acoustic Sensing (DAS) technology finds growing applications across various domains. However, data distribution disparities due to heterogeneous sensing environments pose challenges for data-driven artificial intelligence (AI) models, limiting cross-domain generalization and facing a shortage of labeled training data. To address these issues, this study proposes a foundational model for DAS signal recognition based on a Masked Autoencoder, named MAEPD. The MAEPD model is pretrained on a dataset of 635,860 samples, encompassing DAS gait spatiotemporal signals, 2D GASF images for perimeter security, 2D time-frequency images for pipeline leakage, and open-dataset signals including whale vocalizations and seismic activities, using a self-supervised mask reconstruction task to capture deep semantic features of DAS signals. Visual Prompt Tuning (VPT) is employed for downstream…
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