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Face Recognition using FaceNet (Survey, Performance Test, and Comparison)

机译:使用FaceNet进行人脸识别(调查,性能测试和比较)

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Face recognition that is technology used for recognizing human faces based on certain patterns and re-detect faces in various conditions. Face recognition is currently becoming popular to be applied in various ways, especially in security systems. Various methods of face recognition have been proposed in researches and increased accuracy is the main goal in the development of face recognition methods. FaceNet is one of the new methods in face recognition technology. This method is based on a deep convolutional network and triplet loss training to carry out training data, but the training process requires complex computing and a long time. By integrating the Tensorflow learning machine and pre-trained model, the training time needed is much shorter. This research aims to conduct surveys, test performance, and compare the accuracy of the results of recognizing the face of the FaceNet method with various other methods that have been developed previously. Implementation of the FaceNet method in research using two types of pre-trained models, namely CASIA-WebFace and VGGFace2, and tested on various data sets of standard face images that have been widely used before. From the results of this research experiment, FaceNet showed excellent results and was superior to other methods. By using VGGFace2 pre-trained models, FaceNet is able to touch 100% accuracy on YALE, JAFFE, AT & T datasets, Essex faces95, Essex grimace, 99.375% for Essex faces94 dataset and the worst 77.67% for the faces96 dataset.
机译:人脸识别是一种用于基于某些模式识别人脸并在各种条件下重新检测人脸的技术。人脸识别目前正以各种方式流行,尤其是在安全系统中。在研究中已经提出了各种面部识别方法,并且提高准确性是开发面部识别方法的主要目标。 FaceNet是面部识别技术中的一种新方法。该方法基于深度卷积网络和三元组损失训练来执行训练数据,但是训练过程需要复杂的计算和较长的时间。通过集成Tensorflow学习机和预训练模型,所需的训练时间大大缩短。这项研究旨在进行调查,测试性能,并将FaceNet方法的面部识别结果与之前开发的各种其他方法进行比较。 FaceNet方法在研究中的实现使用了两种类型的预训练模型,即CASIA-WebFace和VGGFace2,并在以前广泛使用的标准面部图像的各种数据集上进行了测试。从该研究实验的结果来看,FaceNet表现出了出色的结果,并且优于其他方法。通过使用VGGFace2预训练模型,FaceNet能够在YALE,JAFFE,AT&T数据集,Essex face95,Essex grimace,Essex face94数据集达到99.375%,在faces96数据集最差的77.67%上达到100%的准确性。

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