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预处理对基于惯性传感器的基于事件的活动分割与分类准确性的影响

Pre-Processing Effect on the Accuracy of Event-Based Activity Segmentation and Classification through Inertial Sensors.

作者信息

Fida Benish, Bernabucci Ivan, Bibbo Daniele, Conforto Silvia, Schmid Maurizio

机构信息

Department of Engineering, University of Roma Tre, Via Vito Volterra, 62, Rome 00146, Italy.

出版信息

Sensors (Basel). 2015 Sep 11;15(9):23095-109. doi: 10.3390/s150923095.

Abstract

Inertial sensors are increasingly being used to recognize and classify physical activities in a variety of applications. For monitoring and fitness applications, it is crucial to develop methods able to segment each activity cycle, e.g., a gait cycle, so that the successive classification step may be more accurate. To increase detection accuracy, pre-processing is often used, with a concurrent increase in computational cost. In this paper, the effect of pre-processing operations on the detection and classification of locomotion activities was investigated, to check whether the presence of pre-processing significantly contributes to an increase in accuracy. The pre-processing stages evaluated in this study were inclination correction and de-noising. Level walking, step ascending, descending and running were monitored by using a shank-mounted inertial sensor. Raw and filtered segments, obtained from a modified version of a rule-based gait detection algorithm optimized for sequential processing, were processed to extract time and frequency-based features for physical activity classification through a support vector machine classifier. The proposed method accurately detected >99% gait cycles from raw data and produced >98% accuracy on these segmented gait cycles. Pre-processing did not substantially increase classification accuracy, thus highlighting the possibility of reducing the amount of pre-processing for real-time applications.

摘要

惯性传感器在各种应用中越来越多地被用于识别和分类身体活动。对于监测和健身应用而言,开发能够分割每个活动周期(例如步态周期)的方法至关重要,这样后续的分类步骤可能会更准确。为了提高检测精度,通常会使用预处理,但同时计算成本也会增加。本文研究了预处理操作对运动活动检测和分类的影响,以检验预处理的存在是否能显著提高精度。本研究评估的预处理阶段包括倾斜校正和去噪。使用安装在小腿上的惯性传感器监测水平行走、上楼梯、下楼梯和跑步。从为顺序处理优化的基于规则的步态检测算法的修改版本中获得的原始和滤波后的片段,通过支持向量机分类器进行处理,以提取基于时间和频率的特征用于身体活动分类。所提出的方法从原始数据中准确检测出>99%的步态周期,并在这些分割的步态周期上产生>98%的准确率。预处理并没有显著提高分类精度,从而突出了在实时应用中减少预处理量的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/35ad/4610499/8a2d90477ff9/sensors-15-23095-g001.jpg

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