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  • 學位論文

遠端醫療中基於人臉辨識之身份認證的生理訊號傳輸

Authentication of Biosignal Transmission Based on Face Recognition for Telemedicine

指導教授 : 張璞曾

摘要


隨著網際網路的技術日漸發展,應用於遠端醫療方面的技術也逐漸成熟,透過網路的連結,病人的各種醫療資訊可以在彈指之間就傳送到遠方的醫療機構,以供醫療人員診斷或儲存,雖然遠端醫療是如此方便,但為了保護使用者的隱私,防止相關的個人資料被竊取,系統會採取一套身份認證程序來確認使用者身份,待使用者通過身份認證後,才能進入系統,開始傳輸資料到遠端的醫療機構,雖然這些認證程序是為了保護病人的隱私,防止個人資料外流,但卻也對使用者造成使用上的困擾,特別是當使用者為老年人或行動不便者時,繁雜的操作過程會使之卻步,因此如何使遠端醫療系統更加方便操作且又能保護個人資料不被竊取,便是目前遠端醫療中一項亟需解決的問題,所以本論文提出利用人臉辨識來取代傳統的認證方法,一方面可以確認使用者的身份,另一方面可以減少使用者需自行輸入相關的驗證資料,方法是擷取使用者臉部影像的特徵,併入待傳輸的生理資料中,待資料傳送到遠方醫療機構後,再分離出這些特徵來確認使用者身份,當使用者身份確認後,再進行所傳輸資料的相關處理,希望上述的這套方法,能減少使用者在使用遠端醫療系統的負擔,進而改善操作上的不便性,便是本論文的最大目的。

並列摘要


Telemedicine has been defined as the use of telecommunications to provide medical information and services. By the transmission of electronic signals from one site to another, people can have the same medical care as that in hospital. Recently with the advancement of internet technology, the telemedicine is more convenient and acceptable to people. Although telemedicine makes long-distance medical services possible, it is not completely suitable to each user. As result of the internet security, telemedicine must have complicated procedures of authentications to prevent user’s privacy from losing. But these complex operations maybe block some people, especially to people with disabilities. So how we can improve these? We propose a new approach to replace traditional authentications in telemedicine. This new approach is face recognition being one of the biometric authentications. Substituting face recognition for manual input will decrease the difficulties in telemedicine. We hope it can provide users with a more convenient and well operational environment.

並列關鍵字

Telemedicine Authentication Face Recognition

參考文獻


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