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Gait analysis to classify external load conditions using linear discriminant analysis

机译:使用线性判别分析对步态进行分析以对外部载荷条件进行分类

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摘要

There are many instances where it is desirable to determine, at a distance, whether a subject is carrying a hidden load. Automated detection systems based on gait analysis have been proposed to detect subjects that carry hidden loads. However, very little baseline gait kinematic analysis has been performed to determine the load carriage effect while ambulating with evenly distributed (front to back) loads on human gait. The work in this paper establishes, via high resolution motion capture trials, the baseline separability of load carriage conditions into loaded and unloaded categories using several standard lower body kinematic parameters. A total of 23 participants (19 for training and 4 for testing) were studied. Satisfactory classification of participants into the correct loading condition was achieved by employing linear discriminant analysis (LDA). Six lower body kinematic parameters including ranges of motion and path lengths from the phase portraits were used to train the LDA to discriminate loaded and unloaded walking conditions. Baseline performance from 4 participants who were not included in training data sets show that the use of LDA provides a 92.5% correct classification over two loaded and unloaded walking conditions. The results suggest that there are gait pattern changes due to external loads, and LDA could be applied successfully to classify the gait patterns with an unknown load condition.
机译:在许多情况下,需要在远处确定对象是否正在承受隐藏负荷。已经提出了基于步态分析的自动检测系统来检测携带隐藏负荷的对象。但是,很少进行基线步态运动学分析来确定负载的运送效果,同时在步态上均匀分布(前后)负荷。本文的工作通过高分辨率运动捕捉试验,使用几种标准的下半身运动学参数,将装载条件分为装载和卸载类别的基线可分离性。共研究了23名参与者(其中19名参加培训,4名参加测试)。通过使用线性判别分析(LDA),可以将参与者满意地分类为正确的负荷条件。六个下半身运动学参数(包括来自相图的运动范围和路径长度)用于训练LDA,以区分有载和无载步行条件。来自未包含在训练数据集中的4名参与者的基准性能表明,LDA的使用在两种有载和无载步行条件下均提供了92.5%的正确分类。结果表明,步态模式由于外部载荷而变化,LDA可以成功地应用于未知载荷条件下的步态模式分类。

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