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Learning Attention as Disentangler for Compositional Zero-shot Learning

About

Compositional zero-shot learning (CZSL) aims at learning visual concepts (i.e., attributes and objects) from seen compositions and combining concept knowledge into unseen compositions. The key to CZSL is learning the disentanglement of the attribute-object composition. To this end, we propose to exploit cross-attentions as compositional disentanglers to learn disentangled concept embeddings. For example, if we want to recognize an unseen composition "yellow flower", we can learn the attribute concept "yellow" and object concept "flower" from different yellow objects and different flowers respectively. To further constrain the disentanglers to learn the concept of interest, we employ a regularization at the attention level. Specifically, we adapt the earth mover's distance (EMD) as a feature similarity metric in the cross-attention module. Moreover, benefiting from concept disentanglement, we improve the inference process and tune the prediction score by combining multiple concept probabilities. Comprehensive experiments on three CZSL benchmark datasets demonstrate that our method significantly outperforms previous works in both closed- and open-world settings, establishing a new state-of-the-art.

Shaozhe Hao, Kai Han, Kwan-Yee K. Wong• 2023

Related benchmarks

TaskDatasetResultRank
Compositional Zero-Shot LearningC-GQA open world
HM Score9.03
65
Compositional Zero-Shot LearningUT-Zappos Closed World
HM51.1
57
Compositional Zero-Shot LearningC-GQA Closed World
HM18
56
Generalized Compositional Zero-Shot LearningC-GQA (test)
AUC0.052
46
Compositional Zero-Shot LearningVAW CZSL (test)
HM10.64
30
Compositional Zero-Shot LearningMIT-States open-vocabulary
HM9.72
16
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