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Generalized Zero-Shot Learning via Synthesized Examples

About

We present a generative framework for generalized zero-shot learning where the training and test classes are not necessarily disjoint. Built upon a variational autoencoder based architecture, consisting of a probabilistic encoder and a probabilistic conditional decoder, our model can generate novel exemplars from seen/unseen classes, given their respective class attributes. These exemplars can subsequently be used to train any off-the-shelf classification model. One of the key aspects of our encoder-decoder architecture is a feedback-driven mechanism in which a discriminator (a multivariate regressor) learns to map the generated exemplars to the corresponding class attribute vectors, leading to an improved generator. Our model's ability to generate and leverage examples from unseen classes to train the classification model naturally helps to mitigate the bias towards predicting seen classes in generalized zero-shot learning settings. Through a comprehensive set of experiments, we show that our model outperforms several state-of-the-art methods, on several benchmark datasets, for both standard as well as generalized zero-shot learning.

Vinay Kumar Verma, Gundeep Arora, Ashish Mishra, Piyush Rai• 2017

Related benchmarks

TaskDatasetResultRank
Generalized Zero-Shot LearningCUB
H Score46.7
250
Generalized Zero-Shot LearningSUN
H34.9
184
Generalized Zero-Shot LearningAWA2
S Score68.1
165
Zero-shot LearningCUB
Top-1 Accuracy59.6
144
Zero-shot LearningSUN
Top-1 Accuracy63.4
114
Zero-shot LearningAWA2
Top-1 Accuracy0.692
95
Generalized Zero-Shot LearningAWA1
S Score67.8
49
Generalized Zero-Shot LearningAwA
U Metric58.3
41
Zero-shot LearningAwA
Top-1 Accuracy69.2
30
Zero-shot LearningAWA1
Top-1 Accuracy69.5
25
Showing 10 of 10 rows

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