Learning Semantically Enhanced Feature for Fine-Grained Image
Classification
- URL: http://arxiv.org/abs/2006.13457v3
- Date: Wed, 26 Aug 2020 14:08:45 GMT
- Title: Learning Semantically Enhanced Feature for Fine-Grained Image
Classification
- Authors: Wei Luo and Hengmin Zhang and Jun Li and Xiu-Shen Wei
- Abstract summary: Our approach learns fine-grained features by enhancing the semantics of sub-features of a global feature.
Our approach is parameter parsimonious and can be easily integrated into the backbone model as a plug-and-play module for end-to-end training.
- Score: 27.136912902584093
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We aim to provide a computationally cheap yet effective approach for
fine-grained image classification (FGIC) in this letter. Unlike previous
methods that rely on complex part localization modules, our approach learns
fine-grained features by enhancing the semantics of sub-features of a global
feature. Specifically, we first achieve the sub-feature semantic by arranging
feature channels of a CNN into different groups through channel permutation.
Meanwhile, to enhance the discriminability of sub-features, the groups are
guided to be activated on object parts with strong discriminability by a
weighted combination regularization. Our approach is parameter parsimonious and
can be easily integrated into the backbone model as a plug-and-play module for
end-to-end training with only image-level supervision. Experiments verified the
effectiveness of our approach and validated its comparable performance to the
state-of-the-art methods. Code is available at https://github.com/cswluo/SEF
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