迁移学习荟萃20191209
综述
理论
模型算法
多源迁移学习
异构迁移学习
在线迁移学习
小样本学习
深度迁移学习
多任务学习
强化迁移学习
迁移度量学习
终身迁移学习
相关资源
领域专家
课程
代码
数据集
- MNIST vs MNIST-M vs SVHN vs Synth vs USPS: digit images
- GTSRB vs Syn Signs : traffic sign recognition datasets, transfer between real and synthetic signs.
- NYU Depth Dataset V2: labeled paired images taken with two different cameras (normal and depth)
- CelebA: faces of celebrities, offering the possibility to perform gender or hair color translation for instance
- Office-Caltech dataset: images of office objects from 10 common categories shared by the Office-31 and Caltech-256 datasets. There are in total four domains: Amazon, Webcam, DSLR and Caltech.
- Cityscapes dataset: street scene photos (source) and their annoted version (target)
- UnityEyes vs MPIIGaze: simulated vs real gaze images (eyes)
- CycleGAN datasets: horse2zebra, apple2orange, cezanne2photo, monet2photo, ukiyoe2photo, vangogh2photo, summer2winter
- pix2pix dataset: edges2handbags, edges2shoes, facade, maps
- RaFD: facial images with 8 different emotions (anger, disgust, fear, happiness, sadness, surprise, contempt, and neutral). You can transfer a face from one emotion to another.
- VisDA 2017 classification dataset: 12 categories of object images in 2 domains: 3D-models and real images.
- Office-Home dataset: images of objects in 4 domains: art, clipart, product and real-world.
- DukeMTMC-reid and Market-1501: two pedestrian datasets collected at different places. The evaluation metric is based on open-set image retrieval.
- Amazon review benchmark dataset: sentiment analysis for four kinds (domains) of reviews: books, DVDs, electronics, kitchen
- ECML/PKDD Spam Filtering: emails from 3 different inboxes, that can represent the 3 domains.
- 20 Newsgroup: collection of newsgroup documents across 6 top categories and 20 subcategories. Subcategories can play the role of the domains, as describe in this article.
实战
初步版本,水平有限,有错误或者不完善的地方,欢迎大家提建议和补充,会一直保持更新,本文为专知内容组原创内容,未经允许不得转载,如需转载请发送邮件至fangquanyi@gmail.com 或 联系微信专知小助手(Rancho_Fang)
敬请关注http://www.zhuanzhi.ai 和关注专知公众号,获取第一手AI相关知识
最近更新:2019-12-09