Real-time Face Recognition System Using Deep Learning Method

Ayu Wirdiani, I Ketut Gede Darma Putra, Made Sudarma, Rukmi Sari Hartati, Lennia Savitri Azzahra Lofiana
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引用次数: 0

Abstract

Face recognition is one of the most popular methods currently used for biometric systems. The selection of a suitable method greatly affects the reliability of the biometrics system. This research will use Deep learning to improve the reliability of the biometric system and will compare it with the SVM method. The Deep Learning method will be adopted using the Siamese Network with the YoloV5 detection method as a real-time face detector. There are two stages in this research: the registration process and the recognition process. The registration process is image acquisition using YoloV5. The image result will be saved in the storage folder, and the preprocessing and training process will use the Siamese Network. The face feature model will be stored in the database. The recognition process is the same as the registration, but the feature extraction result will be embedded and compared with the already trained models. The accuracy rate using the Siamese model was 94%.
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基于深度学习方法的实时人脸识别系统
人脸识别是目前生物识别系统中最常用的方法之一。选择合适的方法对生物识别系统的可靠性有很大的影响。本研究将使用深度学习来提高生物识别系统的可靠性,并将其与支持向量机方法进行比较。将采用深度学习方法,使用Siamese Network与YoloV5检测方法作为实时人脸检测器。本研究分为两个阶段:配准过程和识别过程。配准过程是使用YoloV5进行图像采集。图像结果将保存在存储文件夹中,预处理和训练过程将使用Siamese Network。人脸特征模型将存储在数据库中。识别过程与配准过程相同,但特征提取结果将被嵌入并与已经训练好的模型进行比较。使用暹罗模型的准确率为94%。
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发文量
14
审稿时长
24 weeks
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