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Deep Neural Networks for Learning Spatio-Temporal Features From Tomography Sensors

机译:深度神经网络,用于从断层扫描传感器中学习时空特征

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We demonstrate accurate spatio-temporal gait data classification from raw tomography sensor data without the need to reconstruct images. This is based on a simple yet efficient machine learning methodology based on a convolutional neural network architecture for learning spatio-temporal features, automatically end-to-end from raw sensor data. In a case study on a floor pressure tomography sensor, experimental results show an effective gait pattern classification F-score performance of 97.88 ± 1.70%. It is shown that the automatic extraction of classification features from raw data leads to a substantially better performance, compared to features derived by shallow machine learning models that use the reconstructed images as input, implying that for the purpose of automatic decisionmaking it is possible to eliminate the image reconstruction step. This approach is portable across a range of industrial tasks that involve tomography sensors. The proposed learning architecture is computationally efficient, has a low number of parameters and is able to achieve reliable classification F-score performance from a limited set of experimental samples. We also introduce a floor sensor dataset of 892 samples, encompassing experiments of 10 manners of walking and 3 cognitive-oriented tasks to yield a total of 13 types of gait patterns.
机译:我们展示了从原始断层扫描传感器数据准确的时空步态数据分类,而无需重建图像。这是基于一种简单而有效的机器学习方法,该方法基于卷积神经网络体系结构,用于从原始传感器数据自动端对端学习时空特征。在地板压力层析成像传感器的案例研究中,实验结果表明,有效的步态模式分类F评分性能为97.88±1.70%。结果表明,与使用重构图像作为输入的浅层机器学习模型所得出的特征相比,从原始数据中自动提取分类特征会带来更好的性能,这意味着出于自动决策的目的,可以消除图像重建步骤。这种方法可移植到涉及层析成像传感器的一系列工业任务中。所提出的学习体系结构计算效率高,参数数量少,并且能够从一组有限的实验样本中获得可靠的分类F评分性能。我们还引入了892个样本的地面传感器数据集,包括10种步行方式和3个面向认知任务的实验,以产生总共13种类型的步态模式。

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