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Open World Compositional Zero-Shot Learning

About

Compositional Zero-Shot learning (CZSL) requires to recognize state-object compositions unseen during training. In this work, instead of assuming prior knowledge about the unseen compositions, we operate in the open world setting, where the search space includes a large number of unseen compositions some of which might be unfeasible. In this setting, we start from the cosine similarity between visual features and compositional embeddings. After estimating the feasibility score of each composition, we use these scores to either directly mask the output space or as a margin for the cosine similarity between visual features and compositional embeddings during training. Our experiments on two standard CZSL benchmarks show that all the methods suffer severe performance degradation when applied in the open world setting. While our simple CZSL model achieves state-of-the-art performances in the closed world scenario, our feasibility scores boost the performance of our approach in the open world setting, clearly outperforming the previous state of the art.

Massimiliano Mancini, Muhammad Ferjad Naeem, Yongqin Xian, Zeynep Akata• 2021

Related benchmarks

TaskDatasetResultRank
Generalized Compositional Zero-Shot LearningC-GQA (test)
AUC2.6
46
Compositional Zero-Shot LearningUT-Zappos Closed World
HM43.1
42
Compositional Zero-Shot LearningC-GQA Closed World
HM12.4
41
Compositional Zero-Shot LearningMIT-States open world
HM8.9
38
Compositional Zero-Shot LearningUT-Zappos open world
HM36.9
38
Compositional Zero-Shot LearningC-GQA open world
HM Score3.3
35
Compositional Zero-Shot LearningMIT-States Closed World
Harmonic Mean (HM)0.164
32
Compositional Zero-Shot LearningVAW CZSL (test)
HM14.2
14
Compositional Zero-Shot LearningMIT-States Closed World (test)
AUC4.5
12
Generalized Compositional Zero-Shot LearningUT-Zap50K (test)
AUC28.7
10
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