Department of Mechanical & Electrical Engineering (MEE), School of Food & Advanced Technology (SF&AT), Massey University, Auckland 0632, New Zealand.
Sensors (Basel). 2022 Sep 23;22(19):7206. doi: 10.3390/s22197206.
In recent publications, capacitive sensing floors have been shown to be able to localize individuals in an unobtrusive manner. This paper demonstrates that it might be possible to utilize the walking characteristics extracted from a capacitive floor to recognize subject and gender. Several neural network-based machine learning techniques are developed for recognizing the gender and identity of a target. These algorithms were trained and validated using a dataset constructed from the information captured from 23 subjects while walking, alone, on the sensing floor. A deep neural network comprising a Bi-directional Long Short-Term Memory (BLSTM) provided the most accurate identity performance, classifying individuals with an accuracy of 98.12% on the test data. On the other hand, a Convolutional Neural Network (CNN) was the most accurate for gender recognition, attaining an accuracy of 93.3%. The neural network-based algorithms are benchmarked against Support Vector Machine (SVM), which is a classifier used in many reported works for floor-based recognition tasks. The majority of the neural networks outperform SVM across all accuracy metrics.
最近的出版物表明,电容感应地板能够以一种不引人注目的方式对个体进行定位。本文证明,利用从电容地板中提取的行走特征来识别对象和性别是可能的。已经开发了几种基于神经网络的机器学习技术来识别目标的性别和身份。这些算法是使用从 23 名受试者在感应地板上独自行走时捕获的信息构建的数据集进行训练和验证的。一个由双向长短期记忆 (BLSTM) 组成的深度神经网络提供了最准确的身份性能,在测试数据上对个体的分类准确率达到了 98.12%。另一方面,卷积神经网络 (CNN) 在性别识别方面最为准确,准确率达到 93.3%。基于神经网络的算法与支持向量机 (SVM) 进行了基准测试,SVM 是许多已报道的基于地板识别任务的工作中使用的分类器。在所有准确性指标上,大多数神经网络都优于 SVM。