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首页> 外文期刊>Journal of Sensors >Sequential Human Activity Recognition Based on Deep Convolutional Network and Extreme Learning Machine Using Wearable Sensors
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Sequential Human Activity Recognition Based on Deep Convolutional Network and Extreme Learning Machine Using Wearable Sensors

机译:基于深度卷积网络和使用可穿戴传感器的极端学习机的顺序人类活动识别

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摘要

Human activity recognition (HAR) problems have traditionally been solved by using engineered features obtained by heuristic methods. These methods ignore the time information of the streaming sensor data and cannot achieve sequential human activity recognition. With the use of traditional statistical learning methods, results could easily plunge into the local minimum other than the global optimal and also face the problem of low efficiency. Therefore, we propose a hybrid deep framework based on convolution operations, LSTM recurrent units, and ELM classifier; the advantages are as follows: (1) does not require expert knowledge in extracting features; (2) models temporal dynamics of features; and (3) is more suitable to classify the extracted features and shortens the runtime. All of these unique advantages make it superior to other HAR algorithms. We evaluate our framework on OPPORTUNITY dataset which has been used in OPPORTUNITY challenge. Results show that our proposed method outperforms deep nonrecurrent networks by 6%, outperforming the previous reported best result by 8%. When compared with neural network using BP algorithm, testing time reduced by 38%.
机译:传统上通过使用通过启发式方法获得的工程特征来解决人类活动识别(HAR)问题。这些方法忽略流传感器数据的时间信息,无法实现顺序人类活动识别。通过使用传统的统计学习方法,结果可以很容易地进入全球最优的地方最小,并面临低效率的问题。因此,我们提出了一种基于卷积操作,LSTM复发单位和ELM分类器的混合深框架;优点如下:(1)不需要专家知识提取特征; (2)型号特征的时间动态; (3)更适合对提取的功能进行分类并缩短运行时。所有这些独特的优势使其优于其他RAL算法。我们评估我们在机会数据集合的框架,这些数据集已被用于机会挑战。结果表明,我们提出的方法优于深度非逆转网络,达到6%,优于先前报告的最佳结果8%。与使用BP算法的神经网络相比,测试时间减少了38%。

著录项

  • 来源
    《Journal of Sensors 》 |2018年第4期| 共10页
  • 作者单位

    Beihang Univ Sch Mech Engn er Automat Beijing 100191 Peoples R China;

    Beihang Univ Sch Mech Engn er Automat Beijing 100191 Peoples R China;

    FRI Minist Publ Secur Beijing 100048 Peoples R China;

    Univ Sci &

    Technol Beijing Sch Comp &

    Commun Engn Beijing 100083 Peoples R China;

    Univ Sci &

    Technol Beijing Sch Comp &

    Commun Engn Beijing 100083 Peoples R China;

    FRI Minist Publ Secur Beijing 100048 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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