Title
An efficient monitoring of eclamptic seizures in wireless sensors networks.
Abstract
This paper presents the application of wireless sensing at C-band operating at 4.8 GHz technology (a potential Chinese 5G band). A wireless transceiver is used in the indoor environment to monitor different body motions of a woman experiencing an eclamptic seizure. The body movement shows unique wireless data which carries the wireless channel information. The results indicate that using higher features increases the accuracy from 3% to 4% for classifying data from different body motions. All of the four classifiers are compared by using six performance metrics such as accuracy, recall, precession, specificity, F-measure and Kappa. The values from these metrics indicate the better performance of SVM as compared to other three classifiers, the results indicate that the eclamptic seizures are easily differentiated from other body movements by applying the aforementioned classifiers.
Year
DOI
Venue
2019
10.1016/j.compeleceng.2019.02.011
Computers & Electrical Engineering
Keywords
Field
DocType
C-band,Wireless channel information (WCI),Internet of thing (IoT),Support vector machine (SVM),K-nearest neighbor (KNN),Random forest (RF) and K-mean
Wireless data,Eclamptic seizure,Wireless,Computer science,Support vector machine,Communication channel,Wireless transceiver,Real-time computing
Journal
Volume
ISSN
Citations 
75
0045-7906
3
PageRank 
References 
Authors
0.41
0
8
Name
Order
Citations
PageRank
Daniyal Haider180.86
Aifeng Ren2235.55
Dou Fan3233.63
Nan Zhao4205.51
Xiaodong Yang54613.17
Syed Aziz Shah660.85
Fangming Hu780.86
Qammer H. Abbasi811637.12