Predicted information gain and convolutional neural network for prediction of gait periods using a wearable sensors network

Uriel Martinez-Hernandez, Adrian Rubio-Solis
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引用次数: 0

Abstract

This work presents a method for recognition of walking activities and prediction of gait periods using wearable sensors. First, a Convolutional Neural Network (CNN) is used to recognise the walking activity and gait period. Second, the output of the CNN is used by a Predicted Information Gain (PIG) method to predict the next most probable gait period while walking. The output of these two processes are combined to adapt the recognition accuracy of the system. This adaptive combination allows us to achieve an optimal recognition accuracy over time. The validation of this work is performed with an array of wearable sensors for the recognition of level-ground walking, ramp ascent and ramp descent, and prediction of gait periods. The results show that the proposed system can achieve accuracies of 100% and 99.9% for recognition of walking activity and gait period, respectively. These results show the benefit of having a system capable of predicting or anticipating the next information or event over time. Overall, this approach offers a method for accurate activity recognition, which is a key process for the development of wearable robots capable of safely assist humans in activities of daily living.
使用可穿戴传感器网络预测信息增益和卷积神经网络预测步态周期
这项工作提出了一种使用可穿戴传感器识别步行活动和预测步态周期的方法。首先,使用卷积神经网络(CNN)识别步行活动和步态周期。其次,CNN的输出被预测信息增益(猪)方法用于预测下一个最可能的步态周期。将这两个过程的输出相结合,以适应系统的识别精度。随着时间的推移,这种自适应组合使我们能够获得最佳的识别精度。这项工作的验证是通过一系列可穿戴传感器来进行的,这些传感器用于识别平地行走、斜坡上升和斜坡下降,并预测步态周期。结果表明,该系统对行走活动和步态周期的识别准确率分别达到100%和99.9%。这些结果表明,随着时间的推移,拥有一个能够预测或预测下一个信息或事件的系统的好处。总的来说,这种方法提供了一种准确的活动识别方法,这是开发能够安全协助人类日常生活活动的可穿戴机器人的关键过程。
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