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Attributes learning network for generalized zero-shot learning. | LitMetric

Attributes learning network for generalized zero-shot learning.

Neural Netw

State Key Laboratory of Integrated Services Networks, Xidian University, Shaanxi 710071, China. Electronic address:

Published: June 2022


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Article Abstract

In the absence of unseen training data, zero-shot learning algorithms utilize the semantic knowledge shared by the seen and unseen classes to establish the connection between the visual space and the semantic space, so as to realize the recognition of the unseen classes. However, in real applications, the original semantic representation cannot well characterize both the class-specificity structure and discriminative information in dimension space, which leads to unseen classes being easily misclassified into seen classes. To tackle this problem, we propose a Salient Attributes Learning Network (SALN) to generate discriminative and expressive semantic representation under the supervision of the visual features. Meanwhile, ℓ-norm constraint is employed to make the learned semantic representation well characterize the class-specificity structure and discriminative information in dimension space. Then feature alignment network projects the learned semantic representation into visual space and a relation network is adopted for classification. The performance of the proposed approach has made progress on the five benchmark datasets in generalized zero-shot learning task, and in-depth experiments indicate the effectiveness and excellence of our method.

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Source
http://dx.doi.org/10.1016/j.neunet.2022.02.018DOI Listing

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