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Semantic Autoencoder for Zero-Shot Learning

About

Existing zero-shot learning (ZSL) models typically learn a projection function from a feature space to a semantic embedding space (e.g.~attribute space). However, such a projection function is only concerned with predicting the training seen class semantic representation (e.g.~attribute prediction) or classification. When applied to test data, which in the context of ZSL contains different (unseen) classes without training data, a ZSL model typically suffers from the project domain shift problem. In this work, we present a novel solution to ZSL based on learning a Semantic AutoEncoder (SAE). Taking the encoder-decoder paradigm, an encoder aims to project a visual feature vector into the semantic space as in the existing ZSL models. However, the decoder exerts an additional constraint, that is, the projection/code must be able to reconstruct the original visual feature. We show that with this additional reconstruction constraint, the learned projection function from the seen classes is able to generalise better to the new unseen classes. Importantly, the encoder and decoder are linear and symmetric which enable us to develop an extremely efficient learning algorithm. Extensive experiments on six benchmark datasets demonstrate that the proposed SAE outperforms significantly the existing ZSL models with the additional benefit of lower computational cost. Furthermore, when the SAE is applied to supervised clustering problem, it also beats the state-of-the-art.

Elyor Kodirov, Tao Xiang, Shaogang Gong• 2017

Related benchmarks

TaskDatasetResultRank
Generalized Zero-Shot LearningCUB
H Score136
250
Generalized Zero-Shot LearningSUN
H11.8
184
Generalized Zero-Shot LearningAWA2
S Score82.2
165
Zero-shot LearningCUB
Top-1 Accuracy33.3
144
Image ClassificationCUB
Unseen Top-1 Acc7.8
89
Image ClassificationSUN
Harmonic Mean Top-1 Accuracy11.8
86
Zero-shot LearningSUN (unseen)
Top-1 Accuracy (%)40.3
50
Generalized Zero-Shot LearningAWA1
S Score77.1
49
Zero-shot LearningCUB (unseen)
Top-1 Accuracy33.3
49
Zero-shot Image ClassificationAWA2 (test)
Metric U1.1
46
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