防范校园欺凌的肢体暴力检测

Liang Ye, H. Ferdinando, T. Seppänen, E. Alasaarela
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引用次数: 31

摘要

校园欺凌在青少年中是一个严重的问题,它会导致抑郁、辍学甚至自杀。因此,制定反欺凌方法是很重要的。提出了一种基于活动识别的物理欺凌检测方法。描述了身体暴力检测系统的架构,并开发了模糊多阈值分类器来检测身体欺凌行为,包括推,打和摇晃。重要的是,该应用程序能够将这些类型的行为与日常活动(如跑步、走路、摔倒或做俯卧撑)区分开来。为了实现这一点,该方法使用加速度和陀螺仪信号。实验数据是通过角色扮演校园欺凌场景和日常生活活动收集的。模拟的平均分类准确率达到92%,这对于基于智能手机的身体欺凌检测来说是一个很有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physical Violence Detection for Preventing School Bullying
School bullying is a serious problem among teenagers, causing depression, dropping out of school, or even suicide. It is thus important to develop antibullying methods. This paper proposes a physical bullying detection method based on activity recognition. The architecture of the physical violence detection system is described, and a Fuzzy Multithreshold classifier is developed to detect physical bullying behaviour, including pushing, hitting, and shaking. Importantly, the application has the capability of distinguishing these types of behaviour from such everyday activities as running, walking, falling, or doing push-ups. To accomplish this, the method uses acceleration and gyro signals. Experimental data were gathered by role playing school bullying scenarios and by doing daily-life activities. The simulations achieved an average classification accuracy of 92%, which is a promising result for smartphone-based detection of physical bullying.
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