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首页> 外文期刊>IEEE sensors journal >Assisted Gait Phase Estimation Through an Embedded Depth Camera Using Modified Random Forest Algorithm Classification
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Assisted Gait Phase Estimation Through an Embedded Depth Camera Using Modified Random Forest Algorithm Classification

机译:通过使用修改的随机森林算法分类,通过嵌入式深度相机辅助步态阶段估计

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摘要

The paper presents a novel method for the classification of gait phases for power gait orthosis users based on machine learning. The classification uses depth images collected from a Time of Flight camera embedded in the crutches employed for the assisted gait. The machine learning algorithm foresees an initial phase of data collection and processing, identifying the 3D points belonging to the foot and those belonging to the floor. From these, a feature set is computed analyzing the values of percentiles of distances of the foot from the floor, and passed to a modified version of Random Forest classifier, called Sigma-z Random Forest. The classifier considers the uncertainties associated to each feature set and provides both the classification of the gait phase (stance or swing) and an associated confidence value. In this work, we propose the use of the confidence value to improve the reliability of the gait phase classification, by applying an optimized threshold to the confidence value obtained for each new frame. The algorithm has been tested on different subjects and environments. An average classification accuracy of 87.3% has been obtained (+6.3% with respect to the standard random forest classifier), with a minor loss of unclassifiable frames. Results highlight that unclassifiable samples are usually associated to transitions between stance and swing.
机译:本文介绍了基于机器学习的电力步态矫形器的步态阶段分类的新方法。分类使用从嵌入在用于辅助步态的拐杖中的飞行摄像机中收集的深度图像。机器学习算法预见的数据收集和处理的初始阶段,识别属于脚的3D点和属于地板的3D点。根据这些,计算特征集分析来自地板的脚距离的百分比值,并传递给被称为Sigma-Z随机林的随机林分类器的修改版本。分类器考虑与每个特征集关联的不确定性,并提供步态阶段(姿势或摆动)的分类和相关的置信度值。在这项工作中,我们通过将优化的阈值应用于对每个新帧获得的置信度值,提出使用置信度值来提高步态相分类的可靠性。该算法已经在不同的主题和环境上进行了测试。已经获得了87.3%的平均分类准确度(相对于标准随机林分类器的+ 6.3%),具有轻微损失的无条分配框架。结果突出显示,未分配的样本通常与姿势和摆动之间的过渡相关联。

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