Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model

This paper starts with the study of realistic three-dimensional models, from the two aspects of ink art style simulation model and three-dimensional display technology, explores the three-dimensional display model of three-dimensional model ink style, and conducts experiments through the software de...

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Main Author: Xiaonan Cao
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5564361
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author Xiaonan Cao
author_facet Xiaonan Cao
author_sort Xiaonan Cao
collection DOAJ
description This paper starts with the study of realistic three-dimensional models, from the two aspects of ink art style simulation model and three-dimensional display technology, explores the three-dimensional display model of three-dimensional model ink style, and conducts experiments through the software development platform and auxiliary software. The feasibility of the model is verified. Aiming at the problem of real-time rendering of large-scale 3D scenes in the model, efficient visibility rejection method and a multiresolution fast rendering method were designed to realize the rapid construction and rendering of ink art 3D virtual reality scenes in a big data environment. A two-dimensional cellular automaton is used to simulate a brushstroke model with ink and wash style, and outlines are drawn along the path of the brushstroke to obtain an effect close to the artistic style of ink and wash painting. Set the surface of the model with ink style brushstroke texture patterns, refer to the depth map, normal map, and curvature map information of the model, and simulate the drawing effect of the method by procedural texture mapping. Example verification shows that the rapid visualization analysis model of ink art big data designed in this paper is in line with the prediction requirements of ink art big data three-dimensional display indicators. The fast visibility removal method is used to deal with large-scale three-dimensional ink art in a big data environment. High efficiency is achieved in virtual reality scenes, and the multiresolution fast rendering method better maintains the appearance of the prediction model without major deformation.
format Article
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institution Kabale University
issn 1076-2787
1099-0526
language English
publishDate 2021-01-01
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spelling doaj-art-163068ec29794491a2d06ad303f41c0a2025-02-03T01:31:13ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/55643615564361Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction ModelXiaonan Cao0Department of Design, Shandong University of Arts, Jinan 250014, Shandong, ChinaThis paper starts with the study of realistic three-dimensional models, from the two aspects of ink art style simulation model and three-dimensional display technology, explores the three-dimensional display model of three-dimensional model ink style, and conducts experiments through the software development platform and auxiliary software. The feasibility of the model is verified. Aiming at the problem of real-time rendering of large-scale 3D scenes in the model, efficient visibility rejection method and a multiresolution fast rendering method were designed to realize the rapid construction and rendering of ink art 3D virtual reality scenes in a big data environment. A two-dimensional cellular automaton is used to simulate a brushstroke model with ink and wash style, and outlines are drawn along the path of the brushstroke to obtain an effect close to the artistic style of ink and wash painting. Set the surface of the model with ink style brushstroke texture patterns, refer to the depth map, normal map, and curvature map information of the model, and simulate the drawing effect of the method by procedural texture mapping. Example verification shows that the rapid visualization analysis model of ink art big data designed in this paper is in line with the prediction requirements of ink art big data three-dimensional display indicators. The fast visibility removal method is used to deal with large-scale three-dimensional ink art in a big data environment. High efficiency is achieved in virtual reality scenes, and the multiresolution fast rendering method better maintains the appearance of the prediction model without major deformation.http://dx.doi.org/10.1155/2021/5564361
spellingShingle Xiaonan Cao
Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
Complexity
title Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
title_full Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
title_fullStr Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
title_full_unstemmed Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
title_short Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model
title_sort ink art three dimensional big data three dimensional display index prediction model
url http://dx.doi.org/10.1155/2021/5564361
work_keys_str_mv AT xiaonancao inkartthreedimensionalbigdatathreedimensionaldisplayindexpredictionmodel