Simple Primitives with Feasibility- and Contextuality-Dependence for Open-World Compositional Zero-shot Learning
Zhe Liu, Yun Li, Lina Yao, Xiaojun Chang, Wei Fang, Xiaojun Wu, and Yi, Yang

TL;DR
This paper introduces SAD-SP, a novel approach for open-world compositional zero-shot learning that models the dependence of compositions through feasibility and contextuality, improving recognition of unseen state-object pairs.
Contribution
It proposes modeling feasibility and contextuality dependencies explicitly using Semantic Attention and Knowledge Disentanglement, enhancing open-world CZSL performance.
Findings
Achieves superior or competitive results on three benchmark datasets.
Effectively models feasibility and contextuality dependencies.
Reduces prediction impossible scenarios by semantic attention.
Abstract
The task of Compositional Zero-Shot Learning (CZSL) is to recognize images of novel state-object compositions that are absent during the training stage. Previous methods of learning compositional embedding have shown effectiveness in closed-world CZSL. However, in Open-World CZSL (OW-CZSL), their performance tends to degrade significantly due to the large cardinality of possible compositions. Some recent works separately predict simple primitives (i.e., states and objects) to reduce cardinality. However, they consider simple primitives as independent probability distributions, ignoring the heavy dependence between states, objects, and compositions. In this paper, we model the dependence of compositions via feasibility and contextuality. Feasibility-dependence refers to the unequal feasibility relations between simple primitives, e.g., \textit{hairy} is more feasible with \textit{cat}…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · COVID-19 diagnosis using AI · Geophysical Methods and Applications
