A Novel Artificial Intelligence Based Internet of Things for Fall Detection of Elderly Care Monitoring

G. Gopinath, Kirubasri G. G.V., Haritha Sasikumar, Yazhini .., Jagruti Patil
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引用次数: 7

Abstract

A fall of an older adult often leads to severe injuries and is found to be a significant reason for the death due to post-traumatic complications. Many falls happen in the home atmosphere and prevail unrecognized. Thus, the need for reliable early fall detection is necessary for fast help. Lately, the emergence of wearables, smartphones, IoT, etc., made it possible to develop systems fall detection which aids in the remote monitoring of the elderly. The goal is to allow intelligent algorithms and smartphones to detect falls for elderly care and to monitor them regularly. This work presents the Artificial Intelligence of Things for Fall Detection (AIOTFD) system using a slime mould algorithm (SMA) to optimize the final data. The features extracted using SqueezeNet further CNN based SMA used for data optimization. The validation of the AIOTFD model performance is evaluated through the Multiple Cameras Fall Dataset (MCFD) and UR Fall Detection dataset (URFD). The empirical results accentuated the assuring realization of the model compared to other state-of the art methods.The obtained results shows our proposed AIOTFD attains accuracy of 99.82% and 99.79% and databases can be used for additional investigation and optimizations to increase the recognition rate to enhance the independent life of the elderly.
一种基于人工智能的新型物联网老年人护理监测跌倒检测
老年人摔倒往往导致严重伤害,并被认为是造成创伤后并发症死亡的一个重要原因。许多摔伤都发生在家庭氛围中,而且普遍不为人所知。因此,需要可靠的早期跌倒检测是必要的快速帮助。最近,可穿戴设备、智能手机、物联网等的出现,使得开发跌倒检测系统成为可能,有助于老年人的远程监控。其目标是让智能算法和智能手机检测老年人跌倒,并定期进行监测。本工作介绍了使用黏菌算法(SMA)优化最终数据的人工智能跌倒检测(AIOTFD)系统。利用SqueezeNet提取的特征进一步基于CNN的SMA进行数据优化。通过多相机跌倒数据集(MCFD)和UR跌倒检测数据集(URFD)评估AIOTFD模型性能的验证。与其他先进的方法相比,实证结果强调了该模型的可实现性。结果表明,本文提出的AIOTFD识别准确率分别达到99.82%和99.79%,可以利用数据库进行进一步的调查和优化,以提高识别率,提高老年人的独立生活能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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