在线大学使用最接近的分类方法对学生的面部检测

E. Herdiana, Indra Rustiawan, Zatinniqotaini Zatinniqotaini, Nova Indarayana Yusman
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引用次数: 0

摘要

使用在线系统[在网络上]记录学生在讲座期间的出勤情况对于帮助讲师和学术部门记录每个学生的出勤情况是非常必要的。因此,作者将使用k近邻算法(通常称为K-NN算法)制作一种基于人脸检测[人脸识别]的接近方法,k近邻算法是一种监督学习算法,其中新实例的结果根据k近邻的大多数进行分类。该算法的目的是基于学生出勤/出勤的属性和样本对新对象进行分类。k近邻算法使用邻域分类,邻域分类将被用作新实例的预测值,因此它将得到一个接近学生面部相似度的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deteksi Wajah Kehadiran Mahasiswa Saat Perkuliahan Daring Menggunakan Metode Klasifikasi Nearest Neighboarhood
Recording student attendance  during lectures with an online system [on the network] is very necessary to assist both lecturers and the academic department in recording each student's attendance. Therefore the author will make an approach method based on face detection [face recognition] with the K-Nearest Neighbor algorithm or often called the K-NN algorithm, which is a supervised learning algorithm where the results of the new instance are classified based on the majority of the k-nearest neighbors. . The purpose of this algorithm is to classify new objects based on attributes and samples of student attendance/attendance. The k-Nearest Neighbor algorithm uses the Neighborhood Classification which will be used as the predictive value of the new instance so that it will get a value that will approximate the student's facial resemblance.
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