基于优势轴辨识的惯性传感器活动识别优化

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Rahul Mishra;Aishwarya Soni;Ayush Jain;Priyanka Lalwani;Raj Shah
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引用次数: 0

摘要

近年来,由于低成本,低功耗和紧凑的传感器和微控制器单元的可用性,基于传感器的人类运动活动识别显着增长。虽然使用惯性传感器对人体运动活动识别进行了大量研究,但大多数先前的研究严重依赖于传感器所有轴的数据。然而,在这些研究中,支配轴在减少训练和推理时间方面的重要性在很大程度上被忽视了。本文提出了一种新的方法,优势轴-人体活动识别,旨在识别惯性传感器的优势轴,以有效识别人体运动活动。所提出的方法有效地减少了训练和推理时间,同时仍然达到了很高的准确性。该方法首先通过专用的智能手机应用程序和传感器收集数据。然后对采集到的感官数据进行预处理和标注,用于模型训练。此外,在训练阶段进行交叉验证以确定主导轴,利用数据集中有关方向的信息。最后,在收集到的数据集上进行实验,以评估该方法在准确率和训练时间方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Activity Recognition Through Dominant Axis Identification in Inertial Sensors
Recent years have witnessed significant growth in sensors-based human locomotion activities recognition due to the availability of low-cost, low-power, and compact sensors and microcontroller units. While significant research has been conducted on human locomotion activity recognition using inertial sensors, most prior studies heavily rely on data from all axes of the sensors. However, the importance of dominant axes in reducing training and inference time has been largely overlooked in these investigations. This letter presents a novel approach, dominant axes-human activity recognition, which aims to identify the dominant axes of inertial sensors to effectively recognize human locomotion activities. The proposed approach effectively reduces both training and inference time while still achieving substantial accuracy. The approach begins with data collection through dedicated smartphone applications and sensory probes. Subsequently, the collected sensory data undergoes preprocessing and annotation for model training. Further, cross-validation is performed during the training phase to determine the dominant axes, leveraging information about the orientation within the dataset. Finally, this work conducts experiments on the collected dataset to assess the approach's efficacy in terms of accuracy and training time.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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