计算机科学
生成语法
数据集
匹配(统计)
集合(抽象数据类型)
人工智能
人工神经网络
对抗制
机器学习
生成模型
领域(数学分析)
过程(计算)
训练集
面子(社会学概念)
合成数据
模式识别(心理学)
数据挖掘
数学
统计
数学分析
社会学
操作系统
社会科学
程序设计语言
作者
Antreas Antoniou,Amos Storkey,Harrison Edwards
出处
期刊:Cornell University - arXiv
日期:2017-01-01
被引量:780
标识
DOI:10.48550/arxiv.1711.04340
摘要
Effective training of neural networks requires much data. In the low-data regime, parameters are underdetermined, and learnt networks generalise poorly. Data Augmentation alleviates this by using existing data more effectively. However standard data augmentation produces only limited plausible alternative data. Given there is potential to generate a much broader set of augmentations, we design and train a generative model to do data augmentation. The model, based on image conditional Generative Adversarial Networks, takes data from a source domain and learns to take any data item and generalise it to generate other within-class data items. As this generative process does not depend on the classes themselves, it can be applied to novel unseen classes of data. We show that a Data Augmentation Generative Adversarial Network (DAGAN) augments standard vanilla classifiers well. We also show a DAGAN can enhance few-shot learning systems such as Matching Networks. We demonstrate these approaches on Omniglot, on EMNIST having learnt the DAGAN on Omniglot, and VGG-Face data. In our experiments we can see over 13% increase in accuracy in the low-data regime experiments in Omniglot (from 69% to 82%), EMNIST (73.9% to 76%) and VGG-Face (4.5% to 12%); in Matching Networks for Omniglot we observe an increase of 0.5% (from 96.9% to 97.4%) and an increase of 1.8% in EMNIST (from 59.5% to 61.3%).
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