Javascript must be enabled to continue!
Research on the Digital and Intellectual Development of Tie-Dye Patterns Based on Deep Learning
View through CrossRef
Tie-dye art, as an important expression of traditional Chinese culture, carries unique craft wisdom and aesthetic value. However, traditional tie-dye relies on experience-based creation and involves complex processes, making it difficult to effectively meet the demands of the modern design industry for efficient production and diverse expression. Against the backdrop of the rapid development of Artificial Intelligence Generated Content (AIGC) technology, deep learning offers new possibilities for the digital innovation of traditional patterns. This paper focuses on the application of deep learning in the digital and intelligent development of tie-dye patterns. It provides an in-depth review of innovative approaches utilizing technologies such as Generative Adversarial Networks (GANs) and diffusion models in pattern generation, texture expression, and color control. Furthermore, it analyzes their specific applications in the intelligentization of craft processes, including the recognition of tying structures, prediction of diffusion effects, and quality inspection of finished products. The study reveals that AIGC technologies, represented by deep learning, are progressively advancing tie-dye art from an experience-driven to a data-driven paradigm. They provide effective technical support for the innovative expression and digital dissemination of traditional crafts, constituting a crucial pathway for the modernization and transformation of tie-dye art.
Title: Research on the Digital and Intellectual Development of Tie-Dye Patterns Based on Deep Learning
Description:
Tie-dye art, as an important expression of traditional Chinese culture, carries unique craft wisdom and aesthetic value.
However, traditional tie-dye relies on experience-based creation and involves complex processes, making it difficult to effectively meet the demands of the modern design industry for efficient production and diverse expression.
Against the backdrop of the rapid development of Artificial Intelligence Generated Content (AIGC) technology, deep learning offers new possibilities for the digital innovation of traditional patterns.
This paper focuses on the application of deep learning in the digital and intelligent development of tie-dye patterns.
It provides an in-depth review of innovative approaches utilizing technologies such as Generative Adversarial Networks (GANs) and diffusion models in pattern generation, texture expression, and color control.
Furthermore, it analyzes their specific applications in the intelligentization of craft processes, including the recognition of tying structures, prediction of diffusion effects, and quality inspection of finished products.
The study reveals that AIGC technologies, represented by deep learning, are progressively advancing tie-dye art from an experience-driven to a data-driven paradigm.
They provide effective technical support for the innovative expression and digital dissemination of traditional crafts, constituting a crucial pathway for the modernization and transformation of tie-dye art.
Related Results
TEKNIK TIE DYE MENGGUNAKAN DAUN PEPAYA DAN PEMUTIH PAKAIAN PADA PEMBUATAN MUKENA ANAK
TEKNIK TIE DYE MENGGUNAKAN DAUN PEPAYA DAN PEMUTIH PAKAIAN PADA PEMBUATAN MUKENA ANAK
ABSTRAK - Penelitian ini merupakan penelitian eksperimen, yang bertujuan untuk mengetahui 1) Desain mukena anak dari usia 8-10 tahun pada penerapan motif teknik tie dye menggunaka...
Tie strength, tie brokerage and buyer–supplier co-exploration: a novelty–action trade-off
Tie strength, tie brokerage and buyer–supplier co-exploration: a novelty–action trade-off
PurposeIn the pursuit of co-exploration, the strength and brokerage dimensions of dyadic ties create a novelty–action trade-off: tie strength facilitates coordination but constrain...
Orange dye removal efficiency by few-layer graphene: an investigation by UV-Vis spectroscopy
Orange dye removal efficiency by few-layer graphene: an investigation by UV-Vis spectroscopy
Nowadays, few-layer graphene (FLG) has been introduced as a new type of adsorbent. In this research the orange dyes including methyl orange (MO) as an industrial dye and the soft d...
DAMPAK TEKNOLOGI TERHADAP PROSES BELAJAR MENGAJAR
DAMPAK TEKNOLOGI TERHADAP PROSES BELAJAR MENGAJAR
DAFTAR PUSTAKAAditama, M. H. R., & Selfiardy, S. (2022). Kehidupan Mahasiswa Kuliah Sambil Bekerja di Masa Pandemi Covid-19. Kidspedia: Jurnal Pendidikan Anak Usia Dini, 3(...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Psychological conditions and predictors of intellectual productivity in schoolchildren
Psychological conditions and predictors of intellectual productivity in schoolchildren
Background.The article examines a regression model as an indicator predicting successful intellectual activity in older adolescents at school, given the particular sensitivity of t...
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic
Abstract
Background: To minimize the risk of infection during the COVID-19 pandemic, the learning mode of universities in China has been adjusted, and the online learning o...
Black Berry as a Natural Dye Dyeability of Proteinic Fabrics Using Some Post-Treatments
Black Berry as a Natural Dye Dyeability of Proteinic Fabrics Using Some Post-Treatments
Abstract
The quest for sustainable textile practices has driven research towards the enhancement of dye fastness properties in natural fibers such as silk and wool. This st...

