基于传感器的人类活动识别的可微分先验驱动数据增强

IF 4.5 2区 计算机科学 Q1 COMPUTER SCIENCE, CYBERNETICS
Ye Zhang;Qing Gao;Rong Hu;Qingtang Ding;Boyang Li;Yulan Guo
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引用次数: 0

摘要

由于难以对可穿戴传感器的直观信号进行标注,基于传感器的人体活动识别(HAR)通常存在标注数据不足的问题。为此,最近的进展是采用手工操作或生成模型进行数据增强。手工操作是由人类活动的一些物理先验驱动的,例如,动作扭曲和强度波动。然而,这些方法在维护语义数据属性方面可能面临挑战。虽然生成模型具有较好的数据适应性,但难以将重要的动作先验纳入到数据生成中。本文提出了一种可微先验驱动的HAR数据增强框架。首先,我们将手工制作的增广操作嵌入到一个可微模块中,该模块自适应地选择和优化要组合在一起的操作。然后,我们构建生成模块,在手工操作导出的数据中加入可控扰动,进一步提高数据增强的多样性。通过将手工操作模块和生成模块集成到一个可学习的框架中,有效地提高了识别模型的泛化性能。在五个公共数据集上使用三种不同分类器的大量实验结果证明了所提出框架的有效性。项目页面:https://github.com/crocodilegogogo/DriveData-Under-Review。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differentiable Prior-Driven Data Augmentation for Sensor-Based Human Activity Recognition
Sensor-based human activity recognition (HAR) usually suffers from the problem of insufficient annotated data, due to the difficulty in labeling the intuitive signals of wearable sensors. To this end, recent advances have adopted handcrafted operations or generative models for data augmentation. The handcrafted operations are driven by some physical priors of human activities, e.g., action distortion and strength fluctuations. However, these approaches may face challenges in maintaining semantic data properties. Although the generative models have better data adaptability, it is difficult for them to incorporate important action priors into data generation. This article proposes a differentiable prior-driven data augmentation framework for HAR. First, we embed the handcrafted augmentation operations into a differentiable module, which adaptively selects and optimizes the operations to be combined together. Then, we construct a generative module to add controllable perturbations to the data derived by the handcrafted operations and further improve the diversity of data augmentation. By integrating the handcrafted operation module and the generative module into one learnable framework, the generalization performance of the recognition models is enhanced effectively. Extensive experimental results with three different classifiers on five public datasets demonstrate the effectiveness of the proposed framework. Project page: https://github.com/crocodilegogogo/DriveData-Under-Review.
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来源期刊
IEEE Transactions on Computational Social Systems
IEEE Transactions on Computational Social Systems Social Sciences-Social Sciences (miscellaneous)
CiteScore
10.00
自引率
20.00%
发文量
316
期刊介绍: IEEE Transactions on Computational Social Systems focuses on such topics as modeling, simulation, analysis and understanding of social systems from the quantitative and/or computational perspective. "Systems" include man-man, man-machine and machine-machine organizations and adversarial situations as well as social media structures and their dynamics. More specifically, the proposed transactions publishes articles on modeling the dynamics of social systems, methodologies for incorporating and representing socio-cultural and behavioral aspects in computational modeling, analysis of social system behavior and structure, and paradigms for social systems modeling and simulation. The journal also features articles on social network dynamics, social intelligence and cognition, social systems design and architectures, socio-cultural modeling and representation, and computational behavior modeling, and their applications.
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