Department of Computer Science, Air University, Islamabad 44000, Pakistan.
Department of Computer Science, College of Computer Science and Information System, Najran University, Najran 55461, Saudi Arabia.
Sensors (Basel). 2023 May 12;23(10):4716. doi: 10.3390/s23104716.
Locomotion prediction for human welfare has gained tremendous interest in the past few years. Multimodal locomotion prediction is composed of small activities of daily living and an efficient approach to providing support for healthcare, but the complexities of motion signals along with video processing make it challenging for researchers in terms of achieving a good accuracy rate. The multimodal internet of things (IoT)-based locomotion classification has helped in solving these challenges. In this paper, we proposed a novel multimodal IoT-based locomotion classification technique using three benchmarked datasets. These datasets contain at least three types of data, such as data from physical motion, ambient, and vision-based sensors. The raw data has been filtered through different techniques for each sensor type. Then, the ambient and physical motion-based sensor data have been windowed, and a skeleton model has been retrieved from the vision-based data. Further, the features have been extracted and optimized using state-of-the-art methodologies. Lastly, experiments performed verified that the proposed locomotion classification system is superior when compared to other conventional approaches, particularly when considering multimodal data. The novel multimodal IoT-based locomotion classification system has achieved an accuracy rate of 87.67% and 86.71% over the HWU-USP and Opportunity++ datasets, respectively. The mean accuracy rate of 87.0% is higher than the traditional methods proposed in the literature.
近年来,人们对人类福利的运动预测产生了浓厚的兴趣。多模态运动预测由日常生活中的小活动组成,是为医疗保健提供支持的有效方法,但运动信号的复杂性以及视频处理使得研究人员难以实现高准确率。基于多模式物联网 (IoT) 的运动分类有助于解决这些挑战。在本文中,我们提出了一种使用三个基准数据集的新型多模式 IoT 运动分类技术。这些数据集至少包含三种类型的数据,例如来自物理运动、环境和基于视觉的传感器的数据。原始数据已通过每种传感器类型的不同技术进行了过滤。然后,对环境和基于物理运动的传感器数据进行了窗口化处理,并从基于视觉的数据中检索出骨架模型。进一步,使用最先进的方法提取和优化了特征。最后,实验结果验证了与其他传统方法相比,所提出的运动分类系统具有优越性,特别是在考虑多模态数据时。新型基于多模式物联网的运动分类系统在 HWU-USP 和 Opportunity++数据集上的准确率分别达到 87.67%和 86.71%。平均准确率 87.0%高于文献中提出的传统方法。