Comparative Analysis of Machine Learning Algorithms for Classification of Environmental Sounds and Fall Detection

Farman Hassan, Muhammad Hamza Mehmood, Babar Younis, Nasir Mehmood, Talha Imran, Usama Zafar
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引用次数: 2

Abstract

In recent years, number of elderly people in population has been increased because of the rapid advancements in the medical field, which make it necessary to take care of old people. Accidental fall incidents are life-threatening and can lead to the death of a person if first aid is not given to the injured person. Immediate response and medical assistance are necessary in case of accidental fall incidents to elderly people. The research community explored various fall detection systems to early detect fall incidents, however, still there exist numerous limitations of the systems such as using expensive sensors, wearable sensors that are hard to wear all the time, camera violates the privacy of person, and computational complexity. In order to address the above-mentioned limitations of the existing systems, we proposed a novel set of integrated features that consist of melcepstral coefficients, gammatone cepstral coefficients, and spectral skewness. We employed a decision tree for the classification performance of both binary problems and multi-class problems. We obtained an accuracy of 91.39%, precision of 96.19%, recall of 91.81%, and F1-score of 93.95%. Moreover, we compared our method with existing state-of-the-art methods and the results of our method are higher than other methods. Experimental results demonstrate that our method is reliable for use in medical centers, nursing houses, old houses, and health care provisions.
环境声音分类与跌倒检测的机器学习算法比较分析
近年来,由于医疗领域的快速发展,老年人在人口中的数量有所增加,这使得照顾老年人成为必要。意外跌倒事件是危及生命的,如果不对受伤人员进行急救,可能导致死亡。如长者意外跌倒,必须立即作出反应及提供医疗援助。为了早期发现跌倒事件,研究界探索了各种跌倒检测系统,但是这些系统仍然存在传感器昂贵、可穿戴传感器难以一直佩戴、摄像头侵犯个人隐私、计算复杂性等诸多局限性。为了解决现有系统的上述局限性,我们提出了一套新的集成特征,包括梅尔倒谱系数、伽玛酮倒谱系数和谱偏度。我们采用决策树对二元问题和多类问题进行分类。准确率为91.39%,精密度为96.19%,召回率为91.81%,f1得分为93.95%。并与现有的最先进的方法进行了比较,结果表明本方法的结果高于其他方法。实验结果表明,我们的方法在医疗中心、养老院、老房子和卫生保健机构中使用是可靠的。
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