2018
DOI: 10.1515/phys-2018-0134
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A text-Image feature mapping algorithm based on transfer learning

Abstract: The traditional uniform distribution algorithm does not filter the image data when extracting the approximate features of text-image data under the event, so the similarity between the image data and the text is low, which leads to low accuracy of the algorithm. This paper proposes a text-image feature mapping algorithm based on transfer learning. The existing data is filtered by ‘clustering technology’ to obtain similar data with the target data. The significant text features are calculated through the latent… Show more

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“…One of the main applications of transfer learning is feature extraction [28]. In the feature extraction approach, the output from one or more than one layer in the pretrained CNN is used as the input feature vector for the classification phase [29].…”
Section: Transfer Learning Processmentioning
confidence: 99%
“…One of the main applications of transfer learning is feature extraction [28]. In the feature extraction approach, the output from one or more than one layer in the pretrained CNN is used as the input feature vector for the classification phase [29].…”
Section: Transfer Learning Processmentioning
confidence: 99%