Human Action Recognition Using Deep Learning Methods on Limited Sensory Data

Nilay Tufek, Murat Yalcin, Fatma Kalaoglu, Yi Li, Senem Kursun Bahadir

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    Abstract

    In recent years, due to the widespread usage of various sensors action recognition is becoming more popular in many fields such as person surveillance, human-robot interaction etc. In this study, we aimed to develop an action recognition system by using only limited accelerometer and gyroscopedata. Several deep learning methods like Convolutional Neural Network(CNN), Long-Short Term Memory (LSTM) with classical machine learning algorithms and their combinations were implemented and a performance analysis was carried out. Data balancing and data augmentation methods were applied and accuracy rates were increased noticeably. We achieved new state of-the-art result on the UCI HAR data set by 97.4% accuracy rate with using 3 layer LSTM model. Also, we implemented same model on collected data set (ETEXWELD) and 99.0% accuracy rate was obtained which means a solid contribution. Moreover,the performance analysis is not only based on accuracy results, but also includes precision, recall and f1-score metrics. Additionally, a real-time application was developed by using 3 layer LSTM network for evaluating how the best model classifies activities robustly.
    Original languageEnglish
    JournalIEEE Sensors Journal
    DOIs
    Publication statusPublished - 2 Dec 2019

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