Abstract

In the past decades, cognitive computing and communication densely used in lots of networking areas. Current improvement in deep learning (DL) and big data analysis create great potential to analyze cognitive intelligence (CI) for many applications such as human activity monitoring and recognition through wireless communication. Cognitive intelligence and wireless communication are using to establish smart healthcare systems. Healthcare monitoring systems turn into interesting research subjects where monitoring post-operative surgical patients are the current focal point to the researcher. In this paper, we argue that deep learning along with the wireless communication technique introduces cognitive intelligence for the healthcare monitoring system. We present a deep learning based convolutional neural network (CNN) model to classify image data and a convenient and multi-functional software-defined radio (SDR) platform to detect movement of the ankle of patients who underwent ankle fracture surgery. Capturing wireless channel state information (WCSI) in the presence of the human body and classifying using CNN to observe distinct movements is the key idea of this study. A universal software radio peripheral (USRP) platform used to capture WCSI data and used for classification. AlexNet and ZFNet both are the famous architecture of CNN and used in a parallel way to classify captured WCSI-based images that converted from numeric data. The classification established on the ankles movements after surgery and classification results show that CNN provides satisfying results where test accuracy is 98.98%.

Highlights

  • In the last few years, huge development in AI, software, and hardware technologies make cognitive intelligence (CI) famous in academics and industry

  • wireless channel state information (WCSI) based monitoring is a popular application for cognitive computing and communication

  • The principal novelty of this research work stays in the design of healthcare system to monitor fractured ankle movements after surgery, uses of universal software radio peripheral (USRP) technology to capture WCSI data from wireless signals, and uses of two tested architectures in a parallel manner to build the convolutional neural network (CNN) model

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Summary

INTRODUCTION

In the last few years, huge development in AI, software, and hardware technologies make cognitive intelligence (CI) famous in academics and industry. We use the concept of cognitive intelligence for monitoring. A. Barua et al.: CI for Monitoring Fractured Post-Surgery Ankle Activity Using Channel Information the physical therapists for best ankle exercises to improve the condition. Prior research works like [24]–[27] used simple CNN model instead of complex model to classify wireless data. We convert WCSI data into images and fed into the CNN model to detect ankle movements of post-surgery ankle fractured patients. 4) This work assists post-surgery ankle fractured patients to know the status of the ankles movement with the help of monitoring. 5) This research work helps to contribute to many health care monitoring systems via the USRP platform.

MOTIVATION
SYSTEM MODEL
COLLECTING WCSI USING USRP
1) TRANSMITTER PROCEDURE
RESULT
Findings
CONCLUSION

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