Attribute-Induced Bias Eliminating for Transductive Zero-Shot Learning
Hantao Yao, Shaobo Min, Yongdong Zhang, Changsheng Xu

TL;DR
This paper introduces a novel Attribute-Induced Bias Eliminating (AIBE) module for transductive zero-shot learning, addressing multiple domain biases to improve recognition of unseen categories.
Contribution
The paper proposes a comprehensive bias elimination framework using mean-teacher, graph attention, and center alignment techniques for transductive ZSL.
Findings
Achieved state-of-the-art results on multiple benchmarks.
Effectively reduces semantic and visual domain biases.
Improves recognition accuracy for unseen categories.
Abstract
Transductive Zero-shot learning (ZSL) targets to recognize the unseen categories by aligning the visual and semantic information in a joint embedding space. There exist four kinds of domain biases in Transductive ZSL, i.e., visual bias and semantic bias between two domains and two visual-semantic biases in respective seen and unseen domains, but existing work only focuses on the part of them, which leads to severe semantic ambiguity during the knowledge transfer. To solve the above problem, we propose a novel Attribute-Induced Bias Eliminating (AIBE) module for Transductive ZSL. Specifically, for the visual bias between two domains, the Mean-Teacher module is first leveraged to bridge the visual representation discrepancy between two domains with unsupervised learning and unlabelled images. Then, an attentional graph attribute embedding is proposed to reduce the semantic bias between…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · COVID-19 diagnosis using AI
