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

Omar Costilla Reyes, Patricia Scully, Krikor Ozanyan

    Research output: Contribution to journalArticlepeer-review

    Abstract

    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 decision-making it is possible to eliminate the image reconstruction step. This approach is portable across a range of industrial tasks which 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.
    Original languageEnglish
    Pages (from-to)645-653
    Number of pages9
    JournalIEEE Transactions on Industrial Electronics
    Volume65
    Issue number1
    DOIs
    Publication statusPublished - 9 Aug 2017

    Keywords

    • tomography
    • floor sensor system
    • Deep learning
    • spatio-temporal analysis
    • Machine learning
    • convolutional neural networks

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