4.6 Article

DPVis: Automatic Visual Encoding Based on Deep Learning

Journal

IEEE ACCESS
Volume 11, Issue -, Pages 118078-118087

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3271393

Keywords

Automatic visualization; visual encoding; deep learning; visual channels

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This paper proposes an automatic visual encoding approach based on deep learning, which constructs reliable and comprehensive datasets and trains a deep learning model to provide automated visual encoding recommendations. The approach extends existing automatic visual encoding techniques, improves the functionality and performance of visualization tools, and increases the coverage of data.
Automatic visual encoding is frequently employed in automatic visualization tools to automatically map data to visual elements. This paper proposed an automatic visual encoding approach based on deep learning. This approach constructs visual encoding datasets in a more comprehensive and reliable manner to extract and label widely available visualization graphics on the Internet in accordance with three essentials of visualization. The deep learning model is then trained to create a visual encoding model with powerful generalization performance, enabling automated effective visual encoding recommendations for visual designers. The results demonstrated that our approach extends the automatic visual encoding techniques used by existing visualization tools, enhances the functionality and performance of visualization tools, uncovers previously undiscovered data and increases the coverage of data variables.

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