具有非配对数据的最优传输制导GAN用于惯性信号增强

IF 3.1 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
Yifeng Wang , Yi Zhao , Xinyu Han
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引用次数: 0

摘要

低成本惯性传感器受到固有噪声的影响,但由于缺乏成对的高质量参考,增强其信号仍然具有挑战性,这阻碍了深度学习模型的端到端监督训练。因此,我们建议利用最优传输理论通过非配对数据相关性来利用隐含监督。通过建立特征最优传输定理,导出了不同质量信号特征间最优传输映射的存在条件。我们还量化了最优传输误差的上界,揭示了特征分布差异和特征空间紧致半径对最优传输误差的影响。在此理论基础的指导下,我们设计了一种OTES-GAN,其静态噪声指标降低95%以上,动态位移预测误差降低83.54%,语义识别精度提高17.32%,显著优于所有比较方法,为非配对信号翻译提供了新的理论框架和实践范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal transport guided GAN with unpaired data for inertial signal enhancement
Low-cost inertial sensors suffer from inherent noise, yet enhancing their signals remains challenging due to the absence of paired high-quality references, which hinders end-to-end supervised training for deep learning models. Therefore, we propose leveraging optimal transport theory to exploit implicit supervision through unpaired data correlations. By establishing the Feature Optimal Transport Theorem, we derive the existence conditions for optimal transport mappings between signal features of different qualities. We also quantify the upper bound of optimal transport error, revealing the impact of feature distribution differences and the compactness radius of feature space on the optimal transport error bound. Guided by this theoretical basis, we design an OTES-GAN, which reduces static noise metrics by over 95%, decreases dynamic displacement prediction error by 83.54%, and improves semantic recognition accuracy by 17.32%, outperforming all comparative methods by a significant margin, offering a new theoretical framework and practical paradigm for unpaired signal translation.
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来源期刊
CiteScore
7.20
自引率
9.10%
发文量
852
审稿时长
6.6 months
期刊介绍: Physica A: Statistical Mechanics and its Applications Recognized by the European Physical Society Physica A publishes research in the field of statistical mechanics and its applications. Statistical mechanics sets out to explain the behaviour of macroscopic systems by studying the statistical properties of their microscopic constituents. Applications of the techniques of statistical mechanics are widespread, and include: applications to physical systems such as solids, liquids and gases; applications to chemical and biological systems (colloids, interfaces, complex fluids, polymers and biopolymers, cell physics); and other interdisciplinary applications to for instance biological, economical and sociological systems.
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