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EucliDreamer: Fast and High-Quality Texturing for 3D Models with Stable Diffusion Depth


Conceptos Básicos
Automated texturing method using Stable Diffusion depth enhances quality and speed of 3D models.
Resumen

The paper introduces EucliDreamer, a novel method for generating textures for 3D models using text prompts and 3D meshes. By incorporating Stable Diffusion depth within the Score Distillation Sampling (SDS) process, the model produces high-quality textures in various art styles faster than existing methods. The research addresses common issues in 3D texturing like wrong semantics, view inconsistency, excessive shadows, and bad color tones. Through experiments and user studies, EucliDreamer demonstrates significant improvements in texture generation quality, diversity, and consistency across different viewpoints.

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Estadísticas
Global market size of 3D modeling and animation: $6 billion [12] Over 800K textured models in Objaverse dataset [7] EucliDreamer converges in around 4300 steps [5]
Citas
"Our model can generate more satisfactory results and produce various art styles for the same object." - EucliDreamer Paper "EucliDreamer achieves faster time when generating textures of comparable quality." - EucliDreamer Paper

Ideas clave extraídas de

by Cindy Le,Con... a las arxiv.org 03-15-2024

https://arxiv.org/pdf/2311.15573.pdf
EucliDreamer

Consultas más profundas

How can EucliDreamer's approach to texture generation be applied to other areas beyond 3D modeling?

EucliDreamer's innovative method of integrating Stable Diffusion depth into the texture generation process can have applications beyond just 3D modeling. One potential area where this approach could be beneficial is in virtual reality (VR) and augmented reality (AR) development. By leveraging Stable Diffusion depth for texture generation, developers can create more realistic and immersive environments in VR/AR applications. This would enhance user experiences by providing detailed and high-quality textures that closely mimic real-world objects. Another application could be in the field of architectural visualization. Architects and designers often rely on 3D models to showcase their designs, and having a tool like EucliDreamer that can generate high-quality textures efficiently would streamline the visualization process. It could help in creating photorealistic renderings of buildings, interiors, and landscapes with accurate texturing that enhances the overall presentation. Furthermore, EucliDreamer's approach could also find use in product design and marketing. Companies looking to showcase their products through digital means could benefit from this technology by generating realistic textures for various items such as furniture, gadgets, or clothing. This would enable them to create compelling visual content for e-commerce websites or advertising campaigns.

What are potential drawbacks or limitations of relying on Stable Diffusion depth for texture generation?

While Stable Diffusion depth offers significant advantages in improving the quality and speed of texture generation for 3D models, there are some potential drawbacks and limitations associated with this approach: Complexity: Implementing Stable Diffusion depth into existing workflows may require additional computational resources and expertise due to its intricate nature. Data Dependency: The effectiveness of Stable Diffusion depth relies heavily on the availability of high-quality training data sets. Limited or biased datasets may lead to suboptimal results. View Consistency: Despite improvements made by incorporating depth information, ensuring consistency across different viewpoints remains a challenge with diffusion-based methods. Shadow Handling: While negative prompts can help suppress shadows during texturing, managing light reflections effectively still poses difficulties when using diffusion models. 5 .Training Time: Training models with Stable Diffusion depth may take longer compared to traditional methods due to the complexity involved in conditioning on both color information and depths simultaneously.

How might advancements in AI-powered texture generation impact industries like gaming and media?

Advancements in AI-powered texture generation techniques like those demonstrated by EucliDreamer have the potential to revolutionize industries such as gaming and media: 1 .Enhanced Visual Realism: In gaming, AI-generated textures can significantly improve visual realism by creating detailed environments with lifelike surfaces that enhance player immersion. 2 .Efficiency & Cost-Effectiveness: By automating the texturing process using AI algorithms like EucliDreamer’s method, developers can save time spent manually creating textures while reducing production costs associated with hiring artists for texturing tasks 3 .Personalized Content Creation: Media companies can leverage AI-generated textures to customize content based on viewer preferences quickly.AI-powered tools allow them to produce tailored visuals at scale without compromising quality 4 .Innovative Design Possibilities: With advanced texture-generation capabilities, designers working within these industries will have access to new creative possibilities.AI-driven tools enable experimentation with unique styles,textures,and aesthetics that were previously challenging or time-consuming 5 .Competitive Edge: Companies adopting cutting-edge AI technologiesfortexturegenerationstandtobenefitfroma competitive advantagebydeliveringhigh-qualityvisualsquicklyandefficiently.Thiscanhelpthemstayaheadofthecompetitionandcaptivateaudiencesinagamingormediasetting
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