| Literature DB >> 34367537 |
Qing Chao1, Weiping Ma2, RuiJia Xu3, Lingyan Wu4, Youwen Zhang5, Miao He6, Ke Yang7, Wanxia Yao3, Rong Peng1.
Abstract
Taking into account the current feature extraction speed and recognition effect of intelligent diagnosis of menopausal women's health care behavior, this paper proposes to use a cross-layer convolutional neural network to extract behavior features autonomously and use support vector machine multiclass behavior classifier to classify behavior. Compared with the feature images extracted by traditional methods, the behavioral features extracted in this paper are related to the individual menopausal women and have better semantic information, and the feature description ability in the time domain and the space domain has been enhanced. Through Matlab software, using the database established in this paper to compare its feature extraction time, test classification time, and final recognition accuracy with ordinary convolutional neural networks, it is concluded that the cross-layer CNN-SVM model can ensure the speed of feature extraction. It proves that the method in this paper can be applied to the behavioral intelligent diagnosis system for intelligently nursing menopausal women and has good practical value. This paper designs a home care bed intelligent monitoring system, which can automatically detect the posture of the care bed, and not only can change the posture of the bed under the control of personnel, but also can automatically complete the posture conversion according to the setting. At the same time, the system has the function of monitoring the physical condition of the person being cared for and can detect the heart rate, blood oxygen, and other physiological indicators of the bedridden person. In addition, the system can also provide a remote diagnosis function, allowing nursing staff to remotely view the current state of the nursing bed and the physical condition of the person. After testing, the system works stably, improves the automation and safety of the nursing bed control, and enriches the functions of the nursing bed.Entities:
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Year: 2021 PMID: 34367537 PMCID: PMC8346312 DOI: 10.1155/2021/4963361
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Control system structure.
Figure 2Structure diagram of communication module.
Figure 3The main flow chart of the control program.
Figure 4The flow chart of the behavioral intelligent diagnosis plan for nursing objects.
Figure 5Heart rate data information when the health care bed for menopausal women is “folded back.”
Figure 6Blood oxygen saturation data information when the health care bed for menopausal women is “folded back.”
Figure 7Display of abnormal posture information of the front and back tilt angle of the bed.
Figure 8The accuracy of computer nursing intelligent diagnosis at different timing intervals.
Figure 9Time required for computer nursing remote diagnosis data processing.