Solutions for Fine-grained and Long-tailed Snake Species Recognition in
SnakeCLEF 2022
- URL: http://arxiv.org/abs/2207.01216v1
- Date: Mon, 4 Jul 2022 05:55:58 GMT
- Title: Solutions for Fine-grained and Long-tailed Snake Species Recognition in
SnakeCLEF 2022
- Authors: Cheng Zou, Furong Xu, Meng Wang, Wen Li, Yuan Cheng
- Abstract summary: We introduce our solution in SnakeCLEF 2022 for fine-grained snake species recognition on a heavy long-tailed class distribution.
With an ensemble of several different models, a private score 82.65%, ranking the 3rd, is achieved on the final leaderboard.
- Score: 30.8004334312293
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic snake species recognition is important because it has vast
potential to help lower deaths and disabilities caused by snakebites. We
introduce our solution in SnakeCLEF 2022 for fine-grained snake species
recognition on a heavy long-tailed class distribution. First, a network
architecture is designed to extract and fuse features from multiple modalities,
i.e. photograph from visual modality and geographic locality information from
language modality. Then, logit adjustment based methods are studied to relieve
the impact caused by the severe class imbalance. Next, a combination of
supervised and self-supervised learning method is proposed to make full use of
the dataset, including both labeled training data and unlabeled testing data.
Finally, post processing strategies, such as multi-scale and multi-crop
test-time-augmentation, location filtering and model ensemble, are employed for
better performance. With an ensemble of several different models, a private
score 82.65%, ranking the 3rd, is achieved on the final leaderboard.
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