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Semantically Aligned Bias Reducing Zero Shot Learning

About

Zero shot learning (ZSL) aims to recognize unseen classes by exploiting semantic relationships between seen and unseen classes. Two major problems faced by ZSL algorithms are the hubness problem and the bias towards the seen classes. Existing ZSL methods focus on only one of these problems in the conventional and generalized ZSL setting. In this work, we propose a novel approach, Semantically Aligned Bias Reducing (SABR) ZSL, which focuses on solving both the problems. It overcomes the hubness problem by learning a latent space that preserves the semantic relationship between the labels while encoding the discriminating information about the classes. Further, we also propose ways to reduce the bias of the seen classes through a simple cross-validation process in the inductive setting and a novel weak transfer constraint in the transductive setting. Extensive experiments on three benchmark datasets suggest that the proposed model significantly outperforms existing state-of-the-art algorithms by ~1.5-9% in the conventional ZSL setting and by ~2-14% in the generalized ZSL for both the inductive and transductive settings.

Akanksha Paul, Narayanan C. Krishnan, Prateek Munjal• 2019

Related benchmarks

TaskDatasetResultRank
Generalized Zero-Shot LearningCUB
H Score70.3
250
Generalized Zero-Shot LearningSUN
H48.6
184
Zero-shot LearningCUB
Top-1 Accuracy74
144
Zero-shot LearningSUN
Top-1 Accuracy67.5
114
Image ClassificationCUB
Unseen Top-1 Acc44.8
89
Image ClassificationSUN
Harmonic Mean Top-1 Accuracy43.8
86
Zero-shot LearningSUN (unseen)
Top-1 Accuracy (%)63.5
50
Zero-shot LearningCUB (unseen)
Top-1 Accuracy60.3
49
Generalized Zero-Shot LearningAwA
U Metric79.7
41
Zero-shot LearningAWA2 (unseen)
Top-1 Acc71.3
37
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