Elad Fisher , Roger Alimi , Miki Vizel , Itzik Klein
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To address the limitations of extensive real-world data collection, we developed an innovative two-stage simulation framework to generate the required training datasets. First, the theoretical magnetic field produced by ferromagnetic objects in a 30 m × 30 m area was computed to serve as ground truth data for the network. Second, a simulation model was implemented to replicate the data acquisition process of smartphone magnetometers. This model included real-world survey protocols, noise factors, sensor behavior, and simulated trajectories based on real world recorded data. Compared to the model-based baseline, our method improves anomaly localization, reduces noise, and enhances accuracy. 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Second, a simulation model was implemented to replicate the data acquisition process of smartphone magnetometers. This model included real-world survey protocols, noise factors, sensor behavior, and simulated trajectories based on real world recorded data. Compared to the model-based baseline, our method improves anomaly localization, reduces noise, and enhances accuracy. 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引用次数: 0
摘要
磁场测绘是地球科学中识别异常和了解地下结构的重要工具,需要系统和有条不紊的数据采集。使用智能手机内置的磁力计完成这项任务具有成本效益、可访问性和简单性等优势。最近的工作依赖于基于模型的插值技术,这些技术明显受到稀疏数据收集、传感器噪声、方向相关失真和整体低数据质量的限制。因此,磁图在实际应用中往往存在噪声和不可靠性。在这项工作中,我们的目标是通过引入深度学习(DL)方法来填补这一空白,以克服这些挑战,并从智能手机数据中生成准确、高分辨率的磁场图。为了解决广泛的现实世界数据收集的局限性,我们开发了一个创新的两阶段模拟框架来生成所需的训练数据集。首先,计算30 m × 30 m区域内铁磁物体产生的理论磁场,作为网络的地真值数据;其次,建立了智能手机磁强计数据采集过程的仿真模型。该模型包括真实世界的调查协议、噪声因素、传感器行为以及基于真实世界记录数据的模拟轨迹。与基于模型的基线相比,该方法改进了异常定位,降低了噪声,提高了精度。在第80百分位,MSE和LPIPS指标分别显示75%和55%的改善,通过重建地图的视觉分析进一步验证。
SmartMagDL: Smartphone geomagnetic mapping using deep learning
Magnetic field mapping is an essential tool in geoscience, for identifying anomalies and understanding subsurface structures, requiring systematic and methodical data acquisition. The use of smartphones’ built-in magnetometers for this task offers advantages such as cost-effectiveness, accessibility, and simplicity. Recent works relied on model-based interpolation techniques significantly limited by sparse data collection, sensor noise, orientation-dependent distortions, and overall low data quality. As a result, magnetic maps were often noisy and unreliable for practical applications. In this work, we aim to fill this gap by introducing a deep learning (DL) approach to overcome these challenges and produce accurate, high-resolution magnetic field maps from smartphone data. To address the limitations of extensive real-world data collection, we developed an innovative two-stage simulation framework to generate the required training datasets. First, the theoretical magnetic field produced by ferromagnetic objects in a 30 m × 30 m area was computed to serve as ground truth data for the network. Second, a simulation model was implemented to replicate the data acquisition process of smartphone magnetometers. This model included real-world survey protocols, noise factors, sensor behavior, and simulated trajectories based on real world recorded data. Compared to the model-based baseline, our method improves anomaly localization, reduces noise, and enhances accuracy. At the 80th percentile the MSE and LPIPS metrics showed 75% and 55% improvements respectively, further validated by visual analysis of the reconstructed maps.
期刊介绍:
Computers & Geosciences publishes high impact, original research at the interface between Computer Sciences and Geosciences. Publications should apply modern computer science paradigms, whether computational or informatics-based, to address problems in the geosciences.