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首页> 外文期刊>Journal of Biomechanics >A hidden Markov model-based stride segmentation technique applied to equine inertial sensor trunk movement data.
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A hidden Markov model-based stride segmentation technique applied to equine inertial sensor trunk movement data.

机译:基于隐马尔可夫模型的步幅分割技术应用于马惯性传感器躯干运动数据。

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摘要

Inertial sensors are now sufficiently small and lightweight to be used for the collection of large datasets of both humans and animals. However, processing of these large datasets requires a certain degree of automation to achieve realistic workloads. Hidden Markov models (HMMs) are widely used stochastic pattern recognition tools and enable classification of non-stationary data. Here we apply HMMs to identify and segment into strides, data collected from a trunk-mounted six degrees of freedom inertial sensor in galloping Thoroughbred racehorses. A data set comprising mixed gait sequences from seven horses was subdivided into training, cross-validation and independent test set. Manual gallop stride segmentations were created and used for training as well as for evaluating cross-validation and test set performance. On the test set, 91% of the strides were accurately detected to lie within +/-40ms (<10% stride time) of the manually segmented stride starts. While the automated system did not miss any of the strides, it identified additional gallop strides at the beginning of the trials. In the light of increasing use of inertial sensors for ambulatory measurements in clinical settings, automated processing techniques will be required for efficient data processing to enable instantaneous decision making from large amounts of data. In this context, automation is essential to gain optimal benefits from the potentially increased statistical power associated with large numbers of strides that can be collected in a relatively short period of time. We propose the use of HMM-based classifiers since they are easy to implement. In the present study, consistent results across cross-validation and test set were achieved with limited training data.
机译:惯性传感器现在已经足够小巧,轻巧,可用于收集人类和动物的大型数据集。但是,处理这些大型数据集需要一定程度的自动化才能实现实际的工作量。隐马尔可夫模型(HMM)是广泛使用的随机模式识别工具,可以对非平稳数据进行分类。在这里,我们使用HMM来识别并细分为步幅,这些数据是从奔腾的纯种赛马中安装在躯干上的六自由度惯性传感器收集到的。将包含来自七匹马的混合步态序列的数据集细分为训练,交叉验证和独立测试集。创建了手动疾驰大步分割并将其用于训练以及评估交叉验证和测试集性能。在测试集上,准确地检测到91%的步幅位于手动分段的步幅开始的+/- 40ms(<10%的步幅时间)之内。尽管自动化系统没有错过任何大步前进,但它在试验开始时就发现了其他疾驰大步前进。鉴于越来越多的惯性传感器用于临床环境中的动态测量,将需要自动处理技术来进行有效的数据处理,以便能够根据大量数据进行即时决策。在这种情况下,自动化对于从可能在相对较短的时间内收集到的大量步幅相关的潜在统计能力中获得最佳收益至关重要。我们建议使用基于HMM的分类器,因为它们易于实现。在目前的研究中,交叉验证和测试集的结果一致,但训练数据有限。

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