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用于物联网环境中智能监测残疾人室内活动的人工智能驱动的集成深度学习模型。

Artificial intelligence-driven ensemble deep learning models for smart monitoring of indoor activities in IoT environment for people with disabilities.

作者信息

Arasi Munya A, AlEisa Hussah Nasser, Alneil Amani A, Marzouk Radwa

机构信息

Department of Computer Science, Applied College at RijalAlmaa, King Khalid University, Abha, Saudi Arabia.

Department of Computer Sciences, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia.

出版信息

Sci Rep. 2025 Feb 5;15(1):4337. doi: 10.1038/s41598-025-88450-1.

Abstract

Disabled persons demanding healthcare is a developing global occurrence. The support in longer-term care includes nursing, intricate medical, recovery, and social help services. The price is large, but advanced technologies can aid in decreasing expenditure by certifying effective health services and enhancing the superiority of life. The transformative latent of the Internet of Things (IoT) prolongs the existence of nearly one billion persons worldwide with disabilities. By incorporating smart devices and technologies, the IoT provides advanced solutions to tackle numerous tasks challenged by individuals with disabilities and promote equality. Human activity detection methods are the technical area which studies the classification of actions or movements an individual achieves over the recognition of signals directed by smartphones or wearable sensors or over images or video frames. They are efficient in certifying functions of detection of actions, observing crucial functions, and tracking. Conventional machine learning and deep learning approaches effectively detect human activity. This study develops and designs a metaheuristic optimization-driven ensemble model for smart monitoring of indoor activities for disabled persons (MOEM-SMIADP) model. The proposed MOEM-SMIADP model concentrates on detecting and classifying indoor activities using IoT applications for physically challenged people. First, data preprocessing is performed using min-max normalization to convert input data into useful format. Furthermore, the marine predator algorithm is employed in feature selection. For the detection of indoor activities, the proposed MOEM-SMIADP model utilizes an ensemble of three classifiers, namely the graph convolutional network model, long short-term memory sequence-to-sequence (LSTM-seq2seq) method, and convolutional autoencoder. Eventually, the hyperparameter tuning is accomplished by an improved coati optimization algorithm to enhance the classification outcomes of ensemble models. A wide range of experiments was accompanied to endorse the performance of the MOEM-SMIADP technique. The performance validation of the MOEM-SMIADP technique portrayed a superior accracy value of 99.07% over existing methods.

摘要

残疾人寻求医疗保健是一种在全球范围内不断发展的现象。长期护理支持包括护理、复杂医疗、康复和社会帮助服务。成本很高,但先进技术可以通过确保有效的医疗服务和提高生活质量来帮助降低支出。物联网(IoT)的变革潜力惠及全球近10亿残疾人。通过整合智能设备和技术,物联网提供了先进的解决方案,以应对残疾人面临的众多任务并促进平等。人类活动检测方法是一个技术领域,它研究个体通过智能手机或可穿戴传感器发出的信号识别,或通过图像或视频帧来实现的动作或运动的分类。它们在确定动作检测功能、观察关键功能和跟踪方面很有效。传统的机器学习和深度学习方法能有效检测人类活动。本研究开发并设计了一种用于残疾人室内活动智能监测的元启发式优化驱动集成模型(MOEM-SMIADP)。所提出的MOEM-SMIADP模型专注于利用物联网应用为身体有残疾的人检测和分类室内活动。首先,使用最小-最大归一化进行数据预处理,将输入数据转换为有用的格式。此外,在特征选择中采用海洋捕食者算法。对于室内活动的检测,所提出的MOEM-SMIADP模型利用三个分类器的集成,即图卷积网络模型、长短期记忆序列到序列(LSTM-seq2seq)方法和卷积自动编码器。最终,通过改进的浣熊优化算法完成超参数调整,以提高集成模型的分类结果。进行了广泛的实验来支持MOEM-SMIADP技术的性能。MOEM-SMIADP技术的性能验证表明,其准确率高达99.07%,优于现有方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8844/11799421/4cfaa13307e1/41598_2025_88450_Fig1_HTML.jpg

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