Performance of Machine Learning Classifiers in Distress Keywords Recognition for Audio Surveillance Applications

Nadhirah Johari, Mazlina Mamat, A. Chekima
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引用次数: 1

Abstract

The ability to recognize distress speech is the essence of an intelligent audio surveillance system. With this ability, the surveillance system can be configured to detect specific distress keywords and launch appropriate actions to prevent unwanted incidents from progressing. This paper aims to find potential distress keywords that the audio surveillance system could recognize. The idea is to use a machine learning classifier as the recognition engine. Five distress keywords: ‘Help’, ‘No’, ‘Oi’, ‘Please’, and ‘Tolong’ were selected to be analyzed. A total of 515 audio signals comprising these five distress keywords were collected and used in the training and testing of 27 classifier models, derived from the Decision Tree, Naïve Bias, Support Vector Machine, K-Nearest Neighbour, Ensemble, and Artificial Neural Network. The features extracted from each audio signal are the Mel-frequency Cepstral Coefficients, while the Principal Component Analysis was applied for feature reduction. The results show that the keyword ‘Please’ is the most recognized, followed by ‘Help’, ‘Oi’, ‘No’ and ‘Tolong’, respectively. This observation was achieved using the Ensemble Bagged Trees classifier, which can recognize ‘Please’ with 99% accuracy in training and 100% accuracy in testing.
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机器学习分类器在音频监控遇险关键字识别中的性能
识别遇险语音的能力是智能音频监控系统的本质。有了这种能力,监控系统可以配置为检测特定的遇险关键字,并启动适当的行动,以防止意外事件的发展。本文旨在寻找音频监控系统能够识别的潜在遇险关键词。这个想法是使用机器学习分类器作为识别引擎。选取“Help”、“No”、“Oi”、“Please”、“Tolong”五个遇险关键词进行分析。共收集了515个包含这5个遇险关键词的音频信号,并将其用于27个分类器模型的训练和测试,这些分类器模型分别来自决策树、Naïve Bias、支持向量机、k近邻、Ensemble和人工神经网络。从每个音频信号中提取的特征是mel频倒谱系数,而主成分分析用于特征约简。结果表明,“请”是最容易被识别的关键词,其次是“帮助”、“我”、“不”和“Tolong”。这一观察结果是使用Ensemble Bagged Trees分类器实现的,该分类器在训练中识别“请”的准确率为99%,在测试中准确率为100%。
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