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Papers/Learning multiple visual domains with residual adapters

Learning multiple visual domains with residual adapters

Sylvestre-Alvise Rebuffi, Hakan Bilen, Andrea Vedaldi

2017-05-22NeurIPS 2017 12Continual Learning
PaperPDFCodeCode(official)

Abstract

There is a growing interest in learning data representations that work well for many different types of problems and data. In this paper, we look in particular at the task of learning a single visual representation that can be successfully utilized in the analysis of very different types of images, from dog breeds to stop signs and digits. Inspired by recent work on learning networks that predict the parameters of another, we develop a tunable deep network architecture that, by means of adapter residual modules, can be steered on the fly to diverse visual domains. Our method achieves a high degree of parameter sharing while maintaining or even improving the accuracy of domain-specific representations. We also introduce the Visual Decathlon Challenge, a benchmark that evaluates the ability of representations to capture simultaneously ten very different visual domains and measures their ability to recognize well uniformly.

Results

TaskDatasetMetricValueModel
Continual Learningvisual domain decathlon (10 tasks)decathlon discipline (Score)3131Res. adapt. (large)
Continual Learningvisual domain decathlon (10 tasks)decathlon discipline (Score)2643Res. adapt. finetune all
Continual Learningvisual domain decathlon (10 tasks)decathlon discipline (Score)2621Res. adapt. decay
Continual Learningvisual domain decathlon (10 tasks)decathlon discipline (Score)2503Res. adapt. dom-pred
Continual Learningvisual domain decathlon (10 tasks)decathlon discipline (Score)2118Res. adapt.

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