Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category

In this paper, based on the rapid head generation technique of the model library, we obtain a frontal 2D face photo, mark 13 feature points selected from 7 parts, such as both eyes, nose, mouth, etc., to determine the approximate position of the whole facial features, simulate the real color of the...

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Main Author: Wang Xiaoyi
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.2.01500
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author Wang Xiaoyi
author_facet Wang Xiaoyi
author_sort Wang Xiaoyi
collection DOAJ
description In this paper, based on the rapid head generation technique of the model library, we obtain a frontal 2D face photo, mark 13 feature points selected from 7 parts, such as both eyes, nose, mouth, etc., to determine the approximate position of the whole facial features, simulate the real color of the face according to the texture mapping of the face, and at the same time, we add the texture features of the target face in the to the matching model, to achieve the mapping of overlaying texture to the neutral texture and the fusion of skin color. Using HigherHRNet network extraction to obtain the coordinate information of the joint points of the intangible cultural heritage dance inheritors and their heat maps, the obtained key frames of the dance features are connected in a certain order to obtain the synthesized folk dance video with gesture estimation. Combining semantic segmentation of keyframes and style rendering, the visual image of the dance is designed, and the intangible cultural heritage of folk dance is analyzed through examples. The results show that this paper’s method achieves more than 90% recognition accuracy on all three datasets and more than 94.8% recognition accuracy on the folk dance movement dataset. On the evaluation of folk dance movements, the average distance calculated by this paper’s algorithm is the largest, 95.7, and the average score is the lowest, 43.6. The average distance and average score of this paper’s algorithm are in between the above two cases, i.e., the experimental results verify the effectiveness of this paper’s method. This study promotes the intelligent protection and creative inheritance of Chinese non-heritage dances through digital protection.
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spelling doaj.art-ad0b1d83609f4785b93a4b4bf30c8d7c2024-01-29T08:52:43ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.2.01500Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art CategoryWang Xiaoyi01Luoyang Normal UniversityInstitute of Music, Luoyang, Henan, 471934, China.In this paper, based on the rapid head generation technique of the model library, we obtain a frontal 2D face photo, mark 13 feature points selected from 7 parts, such as both eyes, nose, mouth, etc., to determine the approximate position of the whole facial features, simulate the real color of the face according to the texture mapping of the face, and at the same time, we add the texture features of the target face in the to the matching model, to achieve the mapping of overlaying texture to the neutral texture and the fusion of skin color. Using HigherHRNet network extraction to obtain the coordinate information of the joint points of the intangible cultural heritage dance inheritors and their heat maps, the obtained key frames of the dance features are connected in a certain order to obtain the synthesized folk dance video with gesture estimation. Combining semantic segmentation of keyframes and style rendering, the visual image of the dance is designed, and the intangible cultural heritage of folk dance is analyzed through examples. The results show that this paper’s method achieves more than 90% recognition accuracy on all three datasets and more than 94.8% recognition accuracy on the folk dance movement dataset. On the evaluation of folk dance movements, the average distance calculated by this paper’s algorithm is the largest, 95.7, and the average score is the lowest, 43.6. The average distance and average score of this paper’s algorithm are in between the above two cases, i.e., the experimental results verify the effectiveness of this paper’s method. This study promotes the intelligent protection and creative inheritance of Chinese non-heritage dances through digital protection.https://doi.org/10.2478/amns.2023.2.01500keyframemodel librarytexture mappingsemantic segmentationhigherhrnetintangible cultural heritage01a12
spellingShingle Wang Xiaoyi
Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
Applied Mathematics and Nonlinear Sciences
keyframe
model library
texture mapping
semantic segmentation
higherhrnet
intangible cultural heritage
01a12
title Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
title_full Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
title_fullStr Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
title_full_unstemmed Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
title_short Research on the Digital Preservation of Intangible Cultural Heritage of Folk Dance Art Category
title_sort research on the digital preservation of intangible cultural heritage of folk dance art category
topic keyframe
model library
texture mapping
semantic segmentation
higherhrnet
intangible cultural heritage
01a12
url https://doi.org/10.2478/amns.2023.2.01500
work_keys_str_mv AT wangxiaoyi researchonthedigitalpreservationofintangibleculturalheritageoffolkdanceartcategory