Skip to main content
Communities & Collections
All of DSpace
Statistics
English
العربية
বাংলা
Català
Čeština
Deutsch
Ελληνικά
Español
Suomi
Français
Gàidhlig
हिंदी
Magyar
Italiano
Қазақ
Latviešu
Nederlands
Polski
Português
Português do Brasil
Srpski (lat)
Српски
Svenska
Türkçe
Yкраї́нська
Tiếng Việt
Log In
Log in
New user? Click here to register.
Have you forgotten your password?
Home
理學院
資訊工程學系
學位論文
學位論文
Permanent URI for this collection
http://rportal.lib.ntnu.edu.tw/handle/20.500.12235/73912
Browse
Search
By Issue Date
By Author
By Title
By Subject
By Subject Category
Search
By Issue Date
By Author
By Title
By Subject
By Subject Category
1 results
Back to results
Filters
Author
search.filters.author.許家維
1
search.filters.author.Hsu, Chia-Wei
Subject
1
search.filters.subject.Authentication
1
search.filters.subject.Biometrics
1
search.filters.subject.Feature extraction
1
search.filters.subject.foot pressure recognition system
1
search.filters.subject.Low Cost
Show more
Search subject
Submit
Browse subject tree
Date
Start
End
Submit
2023
1
Has files
1
No
Reset filters
Settings
Sort By
Accessioned Date Descending
Most Relevant
Title Ascending
Date Issued Descending
Results per page
1
5
10
20
40
60
80
100
Search
Author: search.filters.author.許家維
×
Search Tools
Search Results
Now showing
1 - 1 of 1
No Thumbnail Available
Item
腳底壓力辨識系統對於穿著不同鞋種的機器學習與特徵組合之研究
(
2023
)
許家維
;
Hsu, Chia-Wei
Show more
物聯網應用在近年生活中越來越廣泛,像是智慧型手機、智慧手錶與電腦等,皆讓人類的生活更加便利,為了快速且更安全的身分認證來解鎖相關設備,生物辨識技術扮演了非常重要的角色,此技術相較於傳統文字密碼而言,不易被偽造且安全度較高。在過去的腳底壓力分析的研究中,大多皆以赤腳為主要實驗條件,對於在多鞋種相關的條件下研究較少,其使用成本較高的設備進行研究,因設備成本較高對於腳底壓力辨識技術廣泛的應用較為困難。本論文主要在探討受測者穿著多鞋種的情況下,使用腳底壓力辨識技術搭配機器學習與特徵進行身分辨識,最終分析不同機器學習與多特徵組合之辨識率、訓練時間和鞋種。實驗結果顯示使用隨機森林 (Random Forest, RF)在多鞋種實驗中可以達到最佳辨識率77%,訓練時間為2.83秒是所有機器學習中訓練時間最快;其在單一鞋種實驗中可以達到86%辨識率並發現慣用鞋能有更高辨識率。
Show more