Multi-modal Cycle-consistent Generalized Zero-Shot Learning
Rafael Felix, B. G. Vijay Kumar, Ian Reid, Gustavo Carneiro

TL;DR
This paper introduces a multi-modal cycle-consistent regularization for GANs in generalized zero-shot learning, improving the synthesis of visual features and boosting classification accuracy for unseen classes.
Contribution
It proposes a novel cycle-consistency regularization in GAN training to enhance semantic-visual feature alignment in GZSL.
Findings
Achieves state-of-the-art GZSL classification accuracy on multiple datasets.
Demonstrates improved semantic-visual feature consistency.
Outperforms existing methods in unseen class recognition.
Abstract
In generalized zero shot learning (GZSL), the set of classes are split into seen and unseen classes, where training relies on the semantic features of the seen and unseen classes and the visual representations of only the seen classes, while testing uses the visual representations of the seen and unseen classes. Current methods address GZSL by learning a transformation from the visual to the semantic space, exploring the assumption that the distribution of classes in the semantic and visual spaces is relatively similar. Such methods tend to transform unseen testing visual representations into one of the seen classes' semantic features instead of the semantic features of the correct unseen class, resulting in low accuracy GZSL classification. Recently, generative adversarial networks (GAN) have been explored to synthesize visual representations of the unseen classes from their semantic…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Cancer-related molecular mechanisms research
MethodsConvolution · Dogecoin Customer Service Number +1-833-534-1729
