2022
DOI: 10.1007/s11042-022-13788-x
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A fast weighted multi-view Bayesian learning scheme with deep learning for text-based image retrieval from unlabeled galleries

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Cited by 5 publications
(2 citation statements)
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References 38 publications
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“…GPTKL introduces the deep kernel learning strategy to convert the learning of transfer kernel function into learning a deep feature space; thus, GPTKL can benefit from the powerful representation capacity of deep networks. Aiadi Oussama et al propose a multi-view Gaussian-based Bayesian learning scheme, which can efficiently address text-based image retrieval problems [35]. Benefiting from assigning a weight to each view, it can better deal with intra-class variation.…”
Section: Gaussian Processmentioning
confidence: 99%
“…GPTKL introduces the deep kernel learning strategy to convert the learning of transfer kernel function into learning a deep feature space; thus, GPTKL can benefit from the powerful representation capacity of deep networks. Aiadi Oussama et al propose a multi-view Gaussian-based Bayesian learning scheme, which can efficiently address text-based image retrieval problems [35]. Benefiting from assigning a weight to each view, it can better deal with intra-class variation.…”
Section: Gaussian Processmentioning
confidence: 99%
“…Moreover, even if the textual information is relevant to the image, it may not contain the query keywords. Hence, several works [8]- [17] have been proposed to improve the effectiveness of textbased image retrieval systems, such as relevance feedback [18], document structure [19], [20] , query expansion [21]- [25], etc. We are interested in this paper to the use of the links for image re-ranking.…”
Section: Introduction a Motivationmentioning
confidence: 99%