Large-Scale Long-Tailed Recognition in an Open World
Chinese University of Hong Kong · University of California, Berkeley · +3 more institutions
Abstract
Real world data often have a long-tailed and open-ended distribution. A practical recognition system must classify among majority and minority classes, generalize from a few known instances, and acknowledge novelty upon a never seen instance. We define Open Long-Tailed Recognition (OLTR) as learning from such naturally distributed data and optimizing the classification accuracy over a balanced test set which include head, tail, and open classes. OLTR must handle imbalanced classification, few-shot learning, and open-set recognition in one integrated algorithm, whereas existing classification approaches focus only on one aspect and deliver poorly over the entire class spectrum. The key challenges are how to…
Citation impact
- FWCI
- 67.64
- Percentile
- 100%
- References
- 98
Authors
6- ZLZiwei LiuCorresponding
Chinese University of Hong Kong, University of California, Berkeley, International Computer Science Institute
- ZMZhongqi Miao
University of California, Berkeley, International Computer Science Institute, Berkeley College
- XZXiaohang Zhan
Chinese University of Hong Kong
- JWJiayun Wang
University of California, Berkeley, International Computer Science Institute
- BGBoqing Gong
Google (United States), International Computer Science Institute, University of California, Berkeley
Topics & keywords
- Computer science
- Artificial intelligence
- Embedding
- Novelty
- Open set
- Machine learning
- Feature (linguistics)
- Feature vector
- Partnerships for the goals