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基于深度神经网络的冰面滑动检测

Deep Neural Network for Slip Detection on Ice Surface.

机构信息

The Kite Research Institute, Toronto Rehabilitation Institute-University Health Network, University of Toronto, Toronto, ON M5G 2A2, Canada.

Institute of Biomedical Engineering, University of Toronto, Toronto, ON M5S 3G9, Canada.

出版信息

Sensors (Basel). 2020 Dec 2;20(23):6883. doi: 10.3390/s20236883.

Abstract

Slip-induced falls are among the most common causes of major occupational injuries and economic loss in Canada. Identifying the risk factors associated with slip events is key to developing preventive solutions to reduce falls. One factor is the slip-resistance quality of footwear, which is fundamental to reducing the number of falls. Measuring footwear slip resistance with the recently developed Maximum Achievable Angle (MAA) test requires a trained researcher to identify slip events in a simulated winter environment. The human capacity for information processing is limited and human error is natural, especially in a cold environment. Therefore, to remove conflicts associated with human errors, in this paper a deep three-dimensional convolutional neural network is proposed to detect the slips in real-time. The model has been trained by a new dataset that includes data from 18 different participants with various clothing, footwear, walking directions, inclined angles, and surface types. The model was evaluated on three types of slips: Maxi-slip, midi-slip, and mini-slip. This classification is based on the slip perception and recovery of the participants. The model was evaluated based on both 5-fold and Leave-One-Subject-Out (LOSO) cross validation. The best accuracy of 97% was achieved when identifying the maxi-slips. The minimum accuracy of 77% was achieved when classifying the no-slip and mini-slip trials. The overall slip detection accuracy was 86% with sensitivity and specificity of 81% and 91%, respectively. The overall accuracy dropped by about 2% in LOSO cross validation. The proposed slip detection algorithm is not only beneficial for footwear manufactures to improve their footwear slip resistance quality, but it also has other potential applications, such as improving the slip resistance properties of flooring in healthcare facilities, commercial kitchens, and oil drilling platforms.

摘要

滑倒导致的跌倒,是加拿大最常见的重大职业伤害和经济损失原因之一。确定与滑倒事件相关的风险因素,是开发预防措施以减少跌倒的关键。一个因素是鞋类的防滑性能,这是减少跌倒次数的基础。使用最近开发的最大可行角度(Maximum Achievable Angle,MAA)测试来测量鞋类的防滑阻力,需要经过培训的研究人员在模拟冬季环境中识别滑倒事件。人类的信息处理能力有限,出现人为错误是在所难免的,尤其是在寒冷的环境中。因此,为了消除人为错误带来的冲突,本文提出了一种深度三维卷积神经网络,用于实时检测滑倒事件。该模型是通过一个新的数据集进行训练的,其中包括来自 18 名不同参与者的数据,涵盖了各种服装、鞋类、行走方向、倾斜角度和表面类型。该模型在三种类型的滑倒事件上进行了评估:大滑、中滑和小滑。这一分类是基于参与者对滑倒的感知和恢复情况。该模型基于 5 折交叉验证和Leave-One-Subject-Out(LOSO)交叉验证进行了评估。在识别大滑时,模型达到了 97%的最佳准确率。在分类无滑和小滑试验时,模型的最低准确率为 77%。整体滑倒检测准确率为 86%,灵敏度和特异性分别为 81%和 91%。在 LOSO 交叉验证中,整体准确率下降了约 2%。所提出的滑倒检测算法不仅有利于制鞋商提高鞋类的防滑性能,还有其他潜在的应用,例如提高医疗保健设施、商业厨房和石油钻井平台地板的防滑性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9144/7730651/8ebe5b34cfbd/sensors-20-06883-g001.jpg

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