MIC: Mining Interclass Characteristics for Improved Metric Learning

ICCV 2019  ·  Karsten Roth, Biagio Brattoli, Björn Ommer ·

Metric learning seeks to embed images of objects suchthat class-defined relations are captured by the embeddingspace. However, variability in images is not just due to different depicted object classes, but also depends on other latent characteristics such as viewpoint or illumination. In addition to these structured properties, random noise further obstructs the visual relations of interest. The common approach to metric learning is to enforce a representation that is invariant under all factors but the ones of interest. In contrast, we propose to explicitly learn the latent characteristics that are shared by and go across object classes. We can then directly explain away structured visual variability, rather than assuming it to be unknown random noise. We propose a novel surrogate task to learn visual characteristics shared across classes with a separate encoder. This encoder is trained jointly with the encoder for class information by reducing their mutual information. On five standard image retrieval benchmarks the approach significantly improves upon the state-of-the-art.

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Results from the Paper


Ranked #19 on Metric Learning on CUB-200-2011 (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Metric Learning CARS196 ResNet50 (128) + MIC R@1 82.6 # 32
Metric Learning CUB-200-2011 ResNet50 (128) + MIC R@1 66.1 # 19
Metric Learning Stanford Online Products ResNet50 (128) + MIC R@1 77.2 # 31

Methods


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