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A Multi-sensor School Violence Detecting Method Based on Improved Relief-F and D-S Algorithms

机译:一种基于改进救济 - F和D-S算法的多传感学院暴力检测方法

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摘要

School bullying is a common social problem, and school violence is considered to be the most harmful form of school bullying. Fortunately, with the development of movement sensors and pattern recognition techniques, it is possible to detect school violence with artificial intelligence. This paper proposes a school violence detecting method based on improved Relief-F and Dempster-Shafe (D-S) algorithms. Two movement sensors are fixed on the object's waist and leg, respectively, to gather acceleration and gyro data. Altogether nine kinds of activities are gathered, including three kinds of school violence and six kinds of daily-life activities. After wavelet filtering, 39 time-domain features and 12 frequency-domain features are extracted. To reduce computational cost, this paper proposes an improved Relief-F algorithm which selects features according to classification contribution and correlation. By drawing boxplots of the selected features, the authors find that the frequency-domain energy of the y-axis of acceleration can distinguish jumping from other activities. Therefore, the authors build a two-layer classifier. The first layer is a decision tree which separates jumping from other activities, and the second layer is a Radial Basis Function (RBF) neutral network which classifies the remainder eight kinds of activities. Since the two movement sensors work independently, this paper proposes an improved D-S algorithm for decision layer fusion. The improved D-S algorithm designs a new probability distribution function on the evidence model and builds a new fusion rule, which solves the problem of fusion collision. According to the simulation results, the proposed method has increased the recognition accuracy compared with the authors' previous work. 89.6% of school violence and 95.1% of daily-life activities were correctly recognized. The accuracy reached 93.6% and the precision reached 87.8%, which were 29.9% and 2.7% higher than the authors' previous work, respectively.
机译:学校欺凌是一个共同的社会问题,学校暴力被认为是最有害的学校欺凌形式。幸运的是,随着运动传感器的发展和模式识别技术,可以检测与人工智能的学校暴力。本文提出了一种基于改进救济-F和Dempster-Shafe(D-S)算法的学校暴力检测方法。两个运动传感器分别固定在物体的腰部和腿上,以收集加速度和陀螺数据。共收集了九种活动,包括三种学校暴力和六种日常生活活动。小波滤波后,提取39个时间域特征和12个频域特征。为了降低计算成本,本文提出了一种改进的缓解-f算法,其根据分类贡献和相关性选择特征。通过绘制所选功能的Boxplots,作者发现y轴加速度的频域能量可以区分从其他活动的跳跃。因此,作者构建了一个双层分类器。第一层是分离从其他活动跳跃的决策树,第二层是径向基函数(RBF)中立网络,其对剩余的八种活动进行分类。由于两个运动传感器独立工作,因此本文提出了一种改进的决策层融合的D-S算法。改进的D-S算法在证据模型上设计了新的概率分布函数,并建立了一个新的融合规则,解决了融合碰撞问题。根据仿真结果,与作者之前的工作相比,该方法增加了识别准确性。正确认识到89.6%的学校暴力和95.1%的日常生活活动。精度达到93.6%,精度达到87.8%,分别比作者以前的工作高出29.9%和2.7%。

著录项

  • 来源
    《Mobile networks & applications》 |2020年第5期|1655-1662|共8页
  • 作者单位

    Harbin Inst Technol Dept Informat & Commun Engn 2 Yikuang St Harbin 150080 Peoples R China|Univ Oulu OPEM Unit Hlth & Wellness Measurement Res Grp Pentti Kaiteran Katu 1 Oulu 90014 Finland;

    Harbin Inst Technol Dept Informat & Commun Engn 2 Yikuang St Harbin 150080 Peoples R China;

    Univ Oulu OPEM Unit Hlth & Wellness Measurement Res Grp Pentti Kaiteran Katu 1 Oulu 90014 Finland|Petra Christian Univ Dept Elect Engn Siwalankerto 121-131 Surabaya 60236 Indonesia;

    Univ Oulu Physiol Signal Anal Team Pentti Kaiteran Katu 1 Oulu 90014 Finland;

    Univ Oulu OPEM Unit Hlth & Wellness Measurement Res Grp Pentti Kaiteran Katu 1 Oulu 90014 Finland;

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

    Improved Relief-F; Improved D-S; School violence; Activity recognition; Artificial intelligence;

    机译:改进了救济-f;改善了D-S;学校暴力;活动识别;人工智能;

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