数字滤波和信号分解:身体区域传感的先验和自适应方法。

IF 2.3 Q3 ENGINEERING, BIOMEDICAL Biomedical Engineering and Computational Biology Pub Date : 2023-01-01 DOI:10.1177/11795972231166236
Roya Haratian
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引用次数: 0

摘要

本文研究了人体区域传感系统中采集的混合信号中不需要的信号的消除。包括先验和自适应方法在内的一系列滤波技术进行了详细的探讨,并应用于沿新系统轴分解信号以从原始数据中的其他来源分离所需信号。在身体区域系统案例研究的背景下,设计了一个动作捕捉场景,并对引入的信号分解技术进行了批判性评估,并提出了一个新的信号分解技术。应用所研究的滤波和信号分解技术表明,基于函数的方法在减少由于传感器定位随机变化而导致的采集运动数据的不期望变化的影响方面优于其他方法。结果表明,尽管该技术会增加计算复杂性,但在案例研究中,该技术比其他技术平均减少了94%的数据变化。这种技术有助于运动捕捉系统更广泛地适应较低灵敏度的精确传感器定位;因此,更便携的人体区域传感系统。
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Digital Filtering and Signal Decomposition: A Priori and Adaptive Approaches in Body Area Sensing.

Elimination of undesired signals from a mixture of captured signals in body area sensing systems is studied in this paper. A series of filtering techniques including a priori and adaptive approaches are explored in detail and applied involving decomposition of signals along a new system's axis to separate the desired signals from other sources in the original data. Within the context of a case study in body area systems, a motion capture scenario is designed and the introduced signal decomposition techniques are critically evaluated and a new one is proposed. Applying the studied filtering and signal decomposition techniques demonstrates that the functional based approach outperforms the rest in reducing the effect of undesired changes in collected motion data which are due to random changes in sensors positioning. The results showed that the proposed technique reduces variations in the data for average of 94% outperforming the rest of the techniques in the case study although it will add computational complexity. Such technique helps wider adaptation of motion capture systems with less sensitivity to accurate sensor positioning; therefore, more portable body area sensing system.

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