Drawing Attention to Detail: Pose Alignment through Self-Attention for Fine-Grained Object Classification
Intra-class variations in the open world lead to various challenges in classification tasks. To overcome these challenges, fine-grained classification was introduced, and many approaches were proposed. Some rely on locating and using distinguishable local parts within images to achieve invariance to...
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Zusammenfassung: | Intra-class variations in the open world lead to various challenges in
classification tasks. To overcome these challenges, fine-grained classification
was introduced, and many approaches were proposed. Some rely on locating and
using distinguishable local parts within images to achieve invariance to
viewpoint changes, intra-class differences, and local part deformations. Our
approach, which is inspired by P2P-Net, offers an end-to-end trainable
attention-based parts alignment module, where we replace the graph-matching
component used in it with a self-attention mechanism. The attention module is
able to learn the optimal arrangement of parts while attending to each other,
before contributing to the global loss. |
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DOI: | 10.48550/arxiv.2302.04800 |