Hierarchical Bilinear Pooling for Fine-Grained Visual Recognition
About
Fine-grained visual recognition is challenging because it highly relies on the modeling of various semantic parts and fine-grained feature learning. Bilinear pooling based models have been shown to be effective at fine-grained recognition, while most previous approaches neglect the fact that inter-layer part feature interaction and fine-grained feature learning are mutually correlated and can reinforce each other. In this paper, we present a novel model to address these issues. First, a cross-layer bilinear pooling approach is proposed to capture the inter-layer part feature relations, which results in superior performance compared with other bilinear pooling based approaches. Second, we propose a novel hierarchical bilinear pooling framework to integrate multiple cross-layer bilinear features to enhance their representation capability. Our formulation is intuitive, efficient and achieves state-of-the-art results on the widely used fine-grained recognition datasets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Fine-grained Image Classification | CUB200 2011 (test) | Accuracy87.1 | 536 | |
| Fine-grained Image Classification | Stanford Cars (test) | Accuracy93.7 | 348 | |
| Image Classification | Stanford Cars (test) | Accuracy93.7 | 306 | |
| Fine-grained visual classification | FGVC-Aircraft (test) | Top-1 Acc90.3 | 287 | |
| Image Classification | CUB-200-2011 (test) | Top-1 Acc87.1 | 276 | |
| Image Classification | FGVC-Aircraft (test) | Accuracy90.3 | 231 | |
| Fine-grained Image Classification | Stanford Cars | Accuracy93.7 | 206 | |
| Fine-grained Visual Categorization | Stanford Cars (test) | Accuracy93.7 | 110 | |
| Classification | CUB | Accuracy87.1 | 85 | |
| Fine grained classification | Aircraft | Top-1 Acc90.3 | 62 |