Analisis Kinerja Algoritma K-Nearest Neighbors untuk Identifikasi dan Pengenalan Wajah
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Date
2022Author
Prayogi, Andi
Advisor(s)
Efendi, Syahril
Nababan, Erna Budhiarti
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Show full item recordAbstract
Development of science and technology modern face detection and recognition
applied in more sectors like verification identity by every face move application
from various orientation angles. K-Nearest Neighbors algorithm is a classification
object method according to data learning that has a near distance from the tested
object. Using 50 captured data training every object from the tested object use data
images and a real-time webcam. Tested using pictures to get good results accuracy
is 0.94. While tested with by real-time webcam gets different results from various
tested objects. The first object gets accuracy value is 0.83, second object gest an
accuracy value is 0.59. The analysis tested performance algorithm K-Nearest
Neighbors results for face identification and recognition are proven to be able to
produce good accuracy values for flexible data.
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- Master Theses [620]