Face Recognition - A One-Shot Learning Perspective

S. Chanda, GV AsishChakrapani, Anders Brun, A. Hast, U. Pal, D. Doermann
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引用次数: 14

Abstract

Ability to learn from a single instance is something unique to the human species and One-shot learning algorithms try to mimic this special capability. On the other hand, despite the fantastic performance of Deep Learning-based methods on various image classification problems, performance often depends having on a huge number of annotated training samples per class. This fact is certainly a hindrance in deploying deep neural network-based systems in many real-life applications like face recognition. Furthermore, an addition of a new class to the system will require the need to re-train the whole system from scratch. Nevertheless, the prowess of deep learned features could also not be ignored. This research aims to combine the best of deep learned features with a traditional One-Shot learning framework. Results obtained on 2 publicly available datasets are very encouraging achieving over 90% accuracy on 5-way One-Shot tasks, and 84% on 50-way One-Shot problems.
人脸识别-一次性学习视角
从单个实例中学习的能力是人类独有的,一次性学习算法试图模仿这种特殊能力。另一方面,尽管基于深度学习的方法在各种图像分类问题上表现出色,但性能往往取决于每个类是否有大量带注释的训练样本。这一事实无疑是在人脸识别等许多现实应用中部署基于深度神经网络的系统的障碍。此外,向系统中添加一个新类将需要从头开始重新训练整个系统。然而,深度学习特征的威力也不容忽视。这项研究旨在将深度学习的最佳特征与传统的一次性学习框架相结合。在两个公开可用的数据集上获得的结果非常令人鼓舞,在5-way One-Shot任务上达到90%以上的准确率,在50-way One-Shot问题上达到84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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