Make an Omelette with Breaking Eggs: Zero-Shot Learning for Novel Attribute Synthesis
Yu-Hsuan Li, Tzu-Yin Chao, Ching-Chun Huang, Pin-Yu Chen, Wei-Chen, Chiu

TL;DR
This paper introduces ZSLA, a novel zero-shot learning method that synthesizes attribute detectors for unseen attributes by decomposing and recombining seen attributes, enabling automatic dataset annotation and competitive zero-shot classification.
Contribution
First to propose zero-shot attribute detector synthesis via set operations, reducing annotation costs and improving zero-shot learning for novel attributes.
Findings
Synthesized detectors accurately capture novel attribute semantics.
Superior detection and localization performance over baselines.
Automatic annotation with ZSLA achieves comparable results to manual labeling.
Abstract
Most of the existing algorithms for zero-shot classification problems typically rely on the attribute-based semantic relations among categories to realize the classification of novel categories without observing any of their instances. However, training the zero-shot classification models still requires attribute labeling for each class (or even instance) in the training dataset, which is also expensive. To this end, in this paper, we bring up a new problem scenario: "Can we derive zero-shot learning for novel attribute detectors/classifiers and use them to automatically annotate the dataset for labeling efficiency?". Basically, given only a small set of detectors that are learned to recognize some manually annotated attributes (i.e., the seen attributes), we aim to synthesize the detectors of novel attributes in a zero-shot learning manner. Our proposed method, Zero-Shot Learning for…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · COVID-19 diagnosis using AI
