Few-Shot Object Detection via Feature Reweighting
National University of Singapore · University of California, Berkeley
Abstract
Conventional training of a deep CNN based object detector demands a large number of bounding box annotations, which may be unavailable for rare categories. In this work we develop a few-shot object detector that can learn to detect novel objects from only a few annotated examples. Our proposed model leverages fully labeled base classes and quickly adapts to novel classes, using a meta feature learner and a reweighting module within a one-stage detection architecture. The feature learner extracts meta features that are generalizable to detect novel object classes, using training data from base classes with sufficient samples. The reweighting module transforms a few support examples from the novel classes to a…
Citation impact
- FWCI
- 49.93
- Percentile
- 100%
- References
- 67
Authors
6Topics & keywords
- Computer science
- Object detection
- Artificial intelligence
- Margin (machine learning)
- Minimum bounding box
- Object (grammar)
- Feature (linguistics)
- Bounding overwatch
- Quality Education