Evaluation of output embeddings for fine-grained image classification
Max Planck Institute for Informatics · University of Michigan–Ann Arbor
Abstract
Image classification has advanced significantly in recent years with the availability of large-scale image sets. However, fine-grained classification remains a major challenge due to the annotation cost of large numbers of fine-grained categories. This project shows that compelling classification performance can be achieved on such categories even without labeled training data. Given image and class embeddings, we learn a compatibility function such that matching embeddings are assigned a higher score than mismatching ones; zero-shot classification of an image proceeds by finding the label yielding the highest joint compatibility score. We use state-of-the-art image features and focus on different supervised…
Citation impact
- FWCI
- 60.10
- Percentile
- 100%
- References
- 50
Authors
5- ZAZeynep AkataCorresponding
Max Planck Institute for Informatics
- SRScott Reed
University of Michigan–Ann Arbor
- DWDaniel Walter
University of Michigan–Ann Arbor
- HLHonglak Lee
University of Michigan–Ann Arbor
- BSBernt Schiele
Max Planck Institute for Informatics
Topics & keywords
- Contextual image classification
- Pattern recognition (psychology)
- Image (mathematics)
- Training set
- Image retrieval
- Matching (statistics)
- Automatic image annotation
- Labeled data