Mining Discriminative Triplets of Patches for Fine-Grained Classification
About
Fine-grained classification involves distinguishing between similar sub-categories based on subtle differences in highly localized regions; therefore, accurate localization of discriminative regions remains a major challenge. We describe a patch-based framework to address this problem. We introduce triplets of patches with geometric constraints to improve the accuracy of patch localization, and automatically mine discriminative geometrically-constrained triplets for classification. The resulting approach only requires object bounding boxes. Its effectiveness is demonstrated using four publicly available fine-grained datasets, on which it outperforms or achieves comparable performance to the state-of-the-art in classification.
Yaming Wang, Jonghyun Choi, Vlad I. Morariu, Larry S. Davis• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Fine-grained Image Classification | Stanford Cars (test) | Accuracy85.7 | 348 | |
| Image Classification | Stanford Cars (test) | Accuracy92.5 | 306 | |
| Image Classification | FGVC-Aircraft (test) | -- | 231 | |
| Fine-grained Image Classification | Stanford Cars | Accuracy92.5 | 206 | |
| Fine grained classification | Aircraft | Top-1 Acc88.4 | 62 | |
| Fine grained classification | Aircraft 1.0 (test) | Top-1 Accuracy88.4 | 18 |
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