Deep Randomized Ensembles for Metric Learning
About
Learning embedding functions, which map semantically related inputs to nearby locations in a feature space supports a variety of classification and information retrieval tasks. In this work, we propose a novel, generalizable and fast method to define a family of embedding functions that can be used as an ensemble to give improved results. Each embedding function is learned by randomly bagging the training labels into small subsets. We show experimentally that these embedding ensembles create effective embedding functions. The ensemble output defines a metric space that improves state of the art performance for image retrieval on CUB-200-2011, Cars-196, In-Shop Clothes Retrieval and VehicleID.
Hong Xuan, Richard Souvenir, Robert Pless• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Retrieval | CUB-200-2011 (test) | Recall@163.9 | 251 | |
| Image Retrieval | CARS196 (test) | Recall@186 | 134 | |
| Deep Metric Learning | CUB200 2011 (test) | Recall@163.9 | 129 | |
| Image Retrieval | In-shop Clothes Retrieval Dataset | Recall@178.4 | 120 | |
| Image Retrieval | CUB | Recall@163.9 | 87 | |
| In-shop clothes retrieval | in-shop clothes retrieval dataset (test) | Recall@178.4 | 78 | |
| Image Retrieval | CARS 196 (test) | Recall@186 | 56 | |
| Deep Metric Learning | CARS196 (test) | R@186 | 56 | |
| Deep Metric Learning | CARS196 | Recall@186 | 50 | |
| Vehicle Retrieval | VehicleID (Small) | Recall@188.5 | 32 |
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