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Compositional Zero-Shot Learning

Compositional Zero-Shot Learning (CZSL) is a computer vision task in which the goal is to recognize unseen compositions fromed from seen state and object during training. The key challenge in CZSL is the inherent entanglement between the state and object within the context of an image. Some example benchmarks for this task are MIT-states, UT-Zappos, and C-GQA. Models are usually evaluated with the Accuracy for both seen and unseen compositions, as well as their Harmonic Mean(HM).

( Image credit: Heosuab )

Papers

Showing 3140 of 65 papers

TitleStatusHype
HOMOE: A Memory-Based and Composition-Aware Framework for Zero-Shot Learning with Hopfield Network and Soft Mixture of Experts0
GIPCOL: Graph-Injected Soft Prompting for Compositional Zero-Shot LearningCode0
Hierarchical Visual Primitive Experts for Compositional Zero-Shot LearningCode0
Learning Conditional Attributes for Compositional Zero-Shot LearningCode1
CAILA: Concept-Aware Intra-Layer Adapters for Compositional Zero-Shot LearningCode1
Prompting Language-Informed Distribution for Compositional Zero-Shot LearningCode1
DRPT: Disentangled and Recurrent Prompt Tuning for Compositional Zero-Shot Learning0
Learning Attention as Disentangler for Compositional Zero-shot LearningCode1
Troika: Multi-Path Cross-Modal Traction for Compositional Zero-Shot LearningCode1
Distilled Reverse Attention Network for Open-world Compositional Zero-Shot Learning0
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