2023
DOI: 10.1007/s10115-023-01933-3
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Visualizations for universal deep-feature representations: survey and taxonomy

Tomáš Skopal,
Ladislav Peška,
David Hoksza
et al.

Abstract: In data science and content-based retrieval, we find many domain-specific techniques that employ a data processing pipeline with two fundamental steps. First, data entities are represented by some visualizations, while in the second step, the visualizations are used with a machine learning model to extract deep features. Deep convolutional neural networks (DCNN) became the standard and reliable choice. The purpose of using DCNN is either a specific classification task or just a deep feature representation of v… Show more

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