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Transfer Learning for Recognizing Face in Disguise

机译:转移学习识别变相人脸

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摘要

Face recognition is a method in Machine Learning to recognize objects in the picture or video. Humans have a memory to recognize other people and recognize some objects like animals, plants, living objects, and non-living objects. However, how the computer does that although it has memory? Machine Learning is the technique or method in Computer Vision that can be used, so computers can understand one person's face to another person contained in the image or video. In this paper, the author proposes about testing some popular Convolutional Neural Network (CNN) Model Architecture to see which one is better to recognize the person face dataset in disguised. The author uses the “Recognizing Disguised Faces” dataset to distinguish 75 classes of faces, and then try to train and test how accurate it can be recognized by the machine, where it will be useful to anyone who needs to explore and develop an Architecture of Deep Learning. This paper is expected to contribute to the field Machine Learning related algorithm that is used to solve the problem in image classification. The experimental results show significant improvement using transfer learning in VGG Models. We then conclude that ImageNet weight best used for face-recognizing using VGG Models.
机译:人脸识别是机器学习中识别图片或视频中对象的一种方法。人类具有识别他人并识别某些物体(例如动物,植物,生物和非生物)的记忆。但是,尽管计算机有内存,但该如何处理呢?机器学习是计算机视觉中可以使用的技术或方法,因此计算机可以了解图像或视频中包含的一个人面对另一个人的脸。在本文中,作者建议测试一些流行的卷积神经网络(CNN)模型体系结构,以发现哪种模型更适合识别变相的人脸数据集。作者使用“识别伪装的面孔”数据集来区分75种面孔,然后尝试训练和测试机器可以识别出多少准确的面孔,这对于需要探索和开发其架构的任何人都是有用的深度学习。本文有望为与现场机器学习相关的算法做出贡献,该算法用于解决图像分类中的问题。实验结果表明,在VGG模型中使用转移学习可以显着改善。然后我们得出结论,ImageNet权重最适合用于使用VGG模型进行人脸识别。

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