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A school bullying detecting algorithm based on motion recognition and speech emotion recognition

机译:一种基于运动识别和语音情感识别的学校欺负检测算法

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摘要

School bullying is a common social problem among teenagers. It affects the victims both mentally and physically, and is considered as one of the main reasons for depression, dropping out of school, and adolescent suicide. For this reason, preventing school bullying is significant to the student’s mental and physical health. In order to detect bullying events in time, this paper proposes a bullying detecting algorithm based on motion recognition and speech emotion recognition. People wear an electronic equipment, which is used to collect his/her motion and speech data, to detect bullying events in real-time. In this paper, the authors extract five features from acceleration and gyro data for physical bullying detection. The PLP features are extracted for verbal bullying detection. Then authors use the Relief-F algorithm for feature selection, and the PPCA algorithm is used to reduce the dimensionality of the feature matrix. Finally, the authors use the KNN algorithm as the classifier to train the motion recognition model and the SVM algorithm as the classifier to train the speech emotion recognition model. With cross-validation, the average accuracy of the motion recognition system is 80.61%, whereas that of the speech emotion recognition system is 75.76%. The simulation results of the algorithm indicate that the anti-bullying detecting algorithm could identify the bullying event effectively.
机译:学校欺凌是青少年中的一个共同的社会问题。它在精神上和身体上影响了受害者,被认为是抑郁,辍学和青少年自杀的主要原因之一。出于这个原因,预防学校欺凌对学生的精神和身体健康有重要意义。为了及时检测欺凌事件,本文提出了一种基于运动识别和语音情感识别的欺负检测算法。人们佩戴电子设备,用于收集他/她的运动和语音数据,实时检测欺凌事件。在本文中,作者从加速度和陀螺仪数据中提取五个特征,以进行物理欺凌检测。提取PLP功能以用于口头欺凌检测。然后作者使用Feate Selection的CrefieF-F算法,并且PPCA算法用于降低特征矩阵的维度。最后,作者使用KNN算法作为分类器训练运动识别模型和SVM算法作为培训语音情感识别模型的分类器。通过交叉验证,运动识别系统的平均精度为80.61%,而语音情感识别系统的平均准确性是75.76%。该算法的仿真结果表明,防欺负检测算法可以有效地识别欺凌事件。

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