Parameter-Efficient Adaptation of Pre-Trained Vision Foundation Models for Active and Passive Seismic Data Denoising
Jiahua Zhao, Umair bin Waheed, Jing Sun, Yang Cui, Nikos Savva, and Eric Verschuur

TL;DR
This paper introduces a parameter-efficient method to adapt pre-trained vision models for seismic data denoising, enabling robust, domain-generalized noise suppression without extensive retraining.
Contribution
It proposes a novel framework using Low-Rank Adaptation and unsupervised test-time calibration to effectively adapt vision foundation models for seismic denoising tasks.
Findings
Framework matches or outperforms domain-specific models.
Demonstrates strong generalization across different seismic datasets.
Effective noise suppression without requiring ground truth labels.
Abstract
The demand for high-resolution subsurface imaging and continuous Earth monitoring has driven rapid growth in active and passive seismic data from dense geophone deployments, distributed acoustic sensing (DAS) arrays, and large-scale 2D and 3D surveys. This expansion makes complex noise suppression increasingly challenging, especially when signal fidelity must be preserved. Conventional supervised deep learning methods are often task-specific, require large paired datasets, and can suffer from domain shift under new acquisition conditions. Foundation models offer a promising alternative, but pre-training seismic foundation models from scratch requires massive domain-specific data and substantial computation. We propose an efficient framework that repurposes general-purpose Vision Foundation Models (VFMs) for geophysical tasks through Parameter-Efficient Fine-Tuning. The architecture uses…
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