RepMet: Representative-based metric learning for classification and one-shot object detection
About
Distance metric learning (DML) has been successfully applied to object classification, both in the standard regime of rich training data and in the few-shot scenario, where each category is represented by only a few examples. In this work, we propose a new method for DML that simultaneously learns the backbone network parameters, the embedding space, and the multi-modal distribution of each of the training categories in that space, in a single end-to-end training process. Our approach outperforms state-of-the-art methods for DML-based object classification on a variety of standard fine-grained datasets. Furthermore, we demonstrate the effectiveness of our approach on the problem of few-shot object detection, by incorporating the proposed DML architecture as a classification head into a standard object detection model. We achieve the best results on the ImageNet-LOC dataset compared to strong baselines, when only a few training examples are available. We also offer the community a new episodic benchmark based on the ImageNet dataset for the few-shot object detection task.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object Detection | PASCAL VOC (Novel Set 1) | -- | 223 | |
| Object Detection | PASCAL VOC Novel Set 3 | -- | 175 | |
| Object Detection | PASCAL VOC Novel Set 2 | mAP35.8 | 100 | |
| Object Detection | Pascal VOC Overall Average 2007 (test) | mAP@0.530.8 | 20 | |
| Object Detection | ImageNet 5 supports (50 novel categories) | AP5039.6 | 5 |