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Cited 1 time in webofscience Cited 2 time in scopus
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Hierarchical Semantic Loss and Confidence Estimator for Visual-Semantic Embedding-Based Zero-Shot Learningopen access

Authors
Seo, SanghyunKim, Juntae
Issue Date
1-Aug-2019
Publisher
MDPI
Keywords
zero-shot learning; hierarchical semantic loss; confidence estimator; zero-shot cross-modal retrieval; visual-semantic embedding
Citation
APPLIED SCIENCES-BASEL, v.9, no.15
Indexed
SCIE
SCOPUS
Journal Title
APPLIED SCIENCES-BASEL
Volume
9
Number
15
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/7780
DOI
10.3390/app9153133
ISSN
2076-3417
2076-3417
Abstract
Traditional supervised learning is dependent on the label of the training data, so there is a limitation that the class label which is not included in the training data cannot be recognized properly. Therefore, zero-shot learning, which can recognize unseen-classes that are not used in training, is gaining research interest. One approach to zero-shot learning is to embed visual data such as images and rich semantic data related to text labels of visual data into a common vector space to perform zero-shot cross-modal retrieval on newly input unseen-class data. This paper proposes a hierarchical semantic loss and confidence estimator to more efficiently perform zero-shot learning on visual data. Hierarchical semantic loss improves learning efficiency by using hierarchical knowledge in selecting a negative sample of triplet loss, and the confidence estimator estimates the confidence score to determine whether it is seen-class or unseen-class. These methodologies improve the performance of zero-shot learning by adjusting distances from a semantic vector to visual vector when performing zero-shot cross-modal retrieval. Experimental results show that the proposed method can improve the performance of zero-shot learning in terms of hit@k accuracy.
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