GAN最全论文合集

17 篇文章 11 订阅
17 篇文章 11 订阅

已经到2019年了,再回来补充补充,坏消息是GAN的热度已经没有那么高了,一是各种各样的应用坑都被踩完了几乎,二是GAN结构以及不容易训练的问题。

相关论文合集:

Kaiming He大神论文合集 

[深度学习论文从0开始]

Transfer Learning[论文合集]

Object Detection[论文合集]

Reinforcement Learning[论文合集]

Unsupervised Learning[论文合集]

Natural Language Processing[论文合集]

Generative Adversarial Networks[论文合集]

机器学习、深度学习领域最活跃的大牛合集


先敬大佬

LeCun first selects one exemplar breakthrough. (Quora)

The most important one, in my opinion, is adversarial training (also called GAN for Generative Adversarial Networks). This is an idea that was originally proposed by Ian Goodfellow when he was a student with Yoshua Bengio at the University of Montreal (he since moved to Google Brain and recently to OpenAI).

This, and the variations that are now being proposed is the most interesting idea in the last 10 years in ML, in my opinion.

 

  • 相关论文主要出自以下会议2014-2018年论文

CVPR-Conference on Computer Vision and Pattern Recognition

NIPS(NeurIPS)- Neural Information Processing Systems

ICLR-International Conference on Representation Learning

ICCV-International Conference on Computer Vision

ECCV-European Conference on Computer Vision

  • 少量与GAN相关的论文也会被接受

ICML-International Conference on Machine Learning

AAAI-Association for the Advance of Artificial Intelligence

IJCAI-International Joint Conference on Artificial Intelligence

SIGGRAPH-Special Interest Group on GRAPHics and Interactive Techniques

  • 这里是GAN历年的论文发表数

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