通过连体神经网络进行单次变形人脸识别

Jay Zhu
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引用次数: 0

摘要

CNN 网络类别需要对每个类别的多幅图像进行训练。这就使得使用 CNN 进行面部识别变得非常困难,因为通常很难获得足够数量的一个人的图像。另一方面,连体网络使用单次学习,这意味着每个人只需要一张输入图像来训练网络。我们利用连体网络建立了一个面部识别系统。在连体网络中,输入一个人的单张图像,网络将通过学习图像的嵌入来识别这个人。嵌入被用来计算相似度得分--相似的图像将具有更高的相似度得分。然后,将另一张图像输入同一网络,系统将比较两张嵌入图像,以确定它们是否包含同一个人,并给出真或假的输出结果。利用 ORL 和 LFW 数据集,我们对连体网络的多个方面进行了实验。我们对增强数据的随机擦除功能进行了实验,以测试网络在人脸识别中的可靠性。结果表明,在随机擦除遮罩下训练的模型准确率有了明显提高。这种面部识别系统用途广泛,可应用于多种情况。例如,这种系统可用于对面部特征变形的残疾人进行面部识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One-shot deformed face recognition via Siamese neural network
CNN network classes require multiple images per class to train. This makes facial recognition using CNN imprac- tical, as it is often hard to obtain a sufficient number of images of one person. Siamese Networks, on the other hand, uses oneshot learning, meaning that only one input image will be needed to train the network for each person. We build a facial recognition system using Siamese Network. In Siamese Networks, a single image of one person is input, and the network will learn to recognize the person by learning the embedding of the image. The embedding is used to compute a similarity score – similar images will have higher similarity scores. Another image will then be input to the same network, and the system will compare two embeddings to determine whether they contain the same person, giving a true or false output. Using the ORL and LFW dataset, we performed several experiments on multiple aspects of the Siamese Network. We experimented on the Random Erasing function for our augmented data to test the reliability of the network in facial recognition. Results show significant improvement on model accuracy for model trained on random erasing masking. This kind of facial recognition systems is versatile and can be applied to numerous use cases. For example, this kind of system can be used to provide facial recognition for persons with disability that manifests in the deformation of facial features.
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