基于多个可穿戴传感器的跌倒和正常活动分类

Rabia Khalid, Sharjeel Anjum, Chansik Park
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引用次数: 1

摘要

坠落检测和分类系统对于减少坠落的严重后果至关重要,坠落是建筑工地事故的主要原因。可穿戴传感器是用于检测跌倒的技术之一。虽然很多学术工作都致力于这类系统的研究,但很少有人关注在复杂算法训练之前对更简单算法的评估。本研究利用开源的UP跌倒检测数据集,提出有效的数据处理和更简单的基线模型可以获得更好的跌倒方向分类结果。在使用神经网络(NN)、k近邻(kNN)、支持向量机(SVM)、Naïve贝叶斯(NB)和判别分析(DA)分类器等更简单的基线模型之前,使用了一些数据处理技术,如窗口和过滤。研究了如何在达到可接受的检测精度的同时最小化多传感器成本。基于这种鲁棒性分析,细kNN和宽NN对所有五种可穿戴传感器的准确率均达到99.5%。相比之下,使用这些传感器中最好的(腰带和口袋)的准确率为99%,所有11个单独活动的准确率超过93%。这项研究的发现预示着现实世界摔倒预测系统的发展,因为它们能够准确地识别摔倒方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fall and Normal Activity Classification via Multiple Wearable Sensors
A fall detection and classification system is crucial for reducing the severe consequences of falls, which account for the leading cause of accidents on construction sites. Wearable sensors are one of the technologies used to detect falls. Although much academic work has been dedicated to the study of this class of systems, little attention has been paid to the evaluation of simpler algorithms prior to training on complex ones. This study utilizes the open-source UP Fall Detection Dataset and proposes that effective data processing and simpler baseline models give better results for fall-direction classification. Several data-processing techniques like windowing and filtering are used prior to using simpler baseline models like Neural Network (NN), K-Nearest Neighbor (kNN), Support Vector Machine (SVM), Naïve Bayes (NB) and Discriminant Analysis (DA) Classifiers. It is also investigated how to minimize multisensor cost while achieving acceptable detection accuracy. Based on this robustness analysis, fine kNN and wide NN yield 99.5% accuracy for all five wearable sensors. In comparison, using the best of these sensors (belt and pocket) results in 99% accuracy, with accuracy of all 11 individual activities exceeding 93%. The findings of this study bode well for the development of real-world fall-prediction systems as they enable accurate fall direction identification.
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