计算机科学
雷达
人工智能
急诊分诊台
搜救
实时计算
计算机视觉
医学
医疗急救
电信
机器人
作者
Ding Shi,Fulai Liang,Jiahao Qiao,Yaru Wang,Yidan Zhu,Hao Lv,Xiao Yu,Teng Jiao,Fuyuan Liao,Keding Yan,Jianqi Wang,Yang Zhang
出处
期刊:Bioengineering
[Multidisciplinary Digital Publishing Institute]
日期:2023-07-30
卷期号:10 (8): 905-905
被引量:6
标识
DOI:10.3390/bioengineering10080905
摘要
Building collapse leads to mechanical injury, which is the main cause of injury and death, with crush syndrome as its most common complication. During the post-disaster search and rescue phase, if rescue personnel hastily remove heavy objects covering the bodies of injured individuals and fail to provide targeted medical care, ischemia-reperfusion injury may be triggered, leading to rhabdomyolysis. This may result in disseminated intravascular coagulation or acute respiratory distress syndrome, further leading to multiple organ failure, which ultimately leads to shock and death. Using bio-radar to detect vital signs and identify compression states can effectively reduce casualties during the search for missing persons behind obstacles. A time-domain ultra-wideband (UWB) bio-radar was applied for the non-contact detection of human vital sign signals behind obstacles. An echo denoising algorithm based on PSO-VMD and permutation entropy was proposed to suppress environmental noise, along with a wounded compression state recognition network based on radar-life signals. Based on training and testing using over 3000 data sets from 10 subjects in different compression states, the proposed multiscale convolutional network achieved a 92.63% identification accuracy. This outperformed SVM and 1D-CNN models by 5.30% and 6.12%, respectively, improving the casualty rescue success and post-disaster precision.
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