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Transductive Unbiased Embedding for Zero-Shot Learning

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Most existing Zero-Shot Learning (ZSL) methods have the strong bias problem, in which instances of unseen (target) classes tend to be categorized as one of the seen (source) classes. So they yield poor performance after being deployed in the generalized ZSL settings. In this paper, we propose a straightforward yet effective method named Quasi-Fully Supervised Learning (QFSL) to alleviate the bias problem. Our method follows the way of transductive learning, which assumes that both the labeled source images and unlabeled target images are available for training. In the semantic embedding space, the labeled source images are mapped to several fixed points specified by the source categories, and the unlabeled target images are forced to be mapped to other points specified by the target categories. Experiments conducted on AwA2, CUB and SUN datasets demonstrate that our method outperforms existing state-of-the-art approaches by a huge margin of 9.3~24.5% following generalized ZSL settings, and by a large margin of 0.2~16.2% following conventional ZSL settings.

Jie Song, Chengchao Shen, Yezhou Yang, Yang Liu, Mingli Song• 2018

Related benchmarks

TaskDatasetResultRank
Generalized Zero-Shot LearningCUB
H Score73.2
250
Generalized Zero-Shot LearningSUN
H41.7
184
Zero-shot LearningCUB
Top-1 Accuracy72.1
144
Zero-shot LearningSUN
Top-1 Accuracy79.7
114
Zero-shot LearningSUN (unseen)
Top-1 Accuracy (%)58.3
50
Zero-shot LearningCUB (unseen)
Top-1 Accuracy72.1
49
Zero-shot LearningFLO
Top-1 Accuracy58.3
46
Generalized Zero-Shot LearningAwA
U Metric93.1
41
Zero-shot LearningAWA2 (unseen)
Top-1 Acc79.7
37
Zero-shot LearningAwA
Top-1 Accuracy79.7
30
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