DeCAF: A Deep Convolutional Activation Feature for Generic Visual Recognition
University of California, Berkeley · International Computer Science Institute
Abstract
We evaluate whether features extracted from the activation of a deep convolutional network trained in a fully supervised fashion on a large, fixed set of object recognition tasks can be re-purposed to novel generic tasks. Our generic tasks may differ significantly from the originally trained tasks and there may be insufficient labeled or unlabeled data to conventionally train or adapt a deep architecture to the new tasks. We investigate and visualize the semantic clustering of deep convolutional features with respect to a variety of such tasks, including scene recognition, domain adaptation, and fine-grained recognition challenges. We compare the efficacy of relying on various network levels to define a fixed…
Citation impact
- FWCI
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- References
- 46
Authors
7- JDJeff DonahueCorresponding
University of California, Berkeley, International Computer Science Institute
- YJYangqing Jia
University of California, Berkeley, International Computer Science Institute
- OVOriol Vinyals
University of California, Berkeley, International Computer Science Institute
- JHJudy Hoffman
University of California, Berkeley, International Computer Science Institute
- NZNing Zhang
International Computer Science Institute, University of California, Berkeley
Topics & keywords
- Computer science
- Convolutional neural network
- Artificial intelligence
- Deep learning
- Feature (linguistics)
- Cognitive neuroscience of visual object recognition
- Domain adaptation
- Set (abstract data type)