AI News 07月07日 22:56
Tencent Hunyuan3D-PolyGen: A model for ‘art-grade’ 3D assets
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腾讯推出了Hunyuan3D-PolyGen模型,一款专为游戏开发者设计的“艺术级”3D资产生成工具。该模型通过BPT技术压缩3D数据,生成具有高质量细节的3D资产,从而解决游戏开发中3D资产创建的瓶颈问题。Hunyuan3D-PolyGen简化了3D模型的创建流程,提高了效率,并已在腾讯自己的游戏工作室中使用,实现了超过70%的效率提升。该模型的发布预示着AI在游戏开发中的应用将更加成熟,助力开发者专注于创意与设计。

💡Hunyuan3D-PolyGen是腾讯推出的首个“艺术级”3D生成模型,专门为游戏行业设计,旨在提升3D资产的创作质量和效率。

⚙️该模型的核心技术是BPT(Best Performance Technology),能够压缩大量3D数据,生成具有数万个多边形且细节丰富的专业级3D资产。

🔄Hunyuan3D-PolyGen通过三步流程工作:将现有3D网格转换为AI可理解的语言;利用点云数据生成新的网格指令;将指令转化为最终的3D模型,保持几何完整性。

📈腾讯内部测试显示,该模型已在腾讯游戏开发流程中应用,艺术家报告称效率提高了70%以上,表明其在实际应用中的价值。

🧠Hunyuan3D-PolyGen采用强化学习系统,训练AI识别高质量3D模型,从而减少低质量输出,提高生成结果的可靠性。

Tencent has released a model that could be quite literally game-changing for how developers create 3D assets.

The new Hunyuan3D-PolyGen model is Tencent’s first attempt at delivering what they’re calling “art-grade” 3D generation, specifically built for the professionals who craft the digital worlds we play in.

Creating high-quality 3D assets has always been a bottleneck for game developers, with artists spending countless hours perfecting wireframes and wrestling with complex geometry. Tencent reckons they’ve found a way to tackle these headaches head-on, potentially transforming how studios approach asset creation entirely.

Levelling up generating 3D assets

The secret sauce behind Hunyuan3D-PolyGen lies in what Tencent calls BPT technology. In layman’s terms, it means they’ve figured out how to compress massive amounts of 3D data without losing the detail that matters. In practice, that means it’s possible to generate 3D assets with tens of thousands of polygons that actually look professional enough to ship in a commercial game.

What’s particularly clever is how the system handles both triangular and quadrilateral faces. If you’ve ever tried to move 3D assets between different software packages, you’ll know why this matters. Different engines and tools have their preferences, and compatibility issues have historically been a nightmare for studios trying to streamline their workflows.

According to technical documentation, the system utilises an autoregressive mesh generation framework that performs spatial inference through explicit and discrete vertex and patch modelling. This approach ensures the production of high-quality 3D models that meet stringent artistic specifications demanded by commercial game development.

Hunyuan3D-PolyGen works through what’s essentially a three-step dance. First, it takes existing 3D meshes and converts them into a language the AI can understand.

Using point cloud data as a starting point, the system then generates new mesh instructions using techniques borrowed from natural language processing. It’s like teaching the AI to speak in 3D geometry, predicting what should come next based on what it’s already created.

Finally, the system translates these instructions back into actual 3D meshes, complete with all the vertices and faces that make up the final model. The whole process maintains geometric integrity while producing results that would make any technical artist nod in approval.

Tencent isn’t just talking about theoretical improvements that fall apart when tested in real studios; they’ve put this technology to work in their own game development studios. The results? Artists claim to report efficiency gains of over 70 percent.

The system has been baked into Tencent’s Hunyuan 3D AI creation engine and is already running across multiple game development pipelines. This means it’s being used to create actual 3D game assets that players will eventually interact with.

Teaching AI to think like an artist

One of the most impressive aspects of Hunyuan3D-PolyGen is how Tencent has approached quality control. They’ve developed a reinforcement learning system that essentially teaches the AI to recognise good work from bad work, much like how a mentor might guide a junior artist.

The system learns from feedback, gradually improving its ability to generate 3D assets that meet professional standards. This means fewer duds and more usable results straight out of the box. For studios already stretched thin on resources, this kind of reliability could be transformative.

The gaming industry has been grappling with a fundamental problem for years. While AI has made impressive strides in generating 3D models, most of the output has been, quite frankly, not good enough for commercial use. The gap between “looks impressive in a demo” and “ready for a AAA game” has been enormous.

Tencent’s approach with Hunyuan3D-PolyGen feels different because it’s clearly been designed by people who understand what actual game development looks like. Instead of chasing flashy demonstrations, they’ve focused on solving real workflow problems that have been frustrating developers for decades.

As development costs continue to spiral and timelines get ever more compressed, tools that can accelerate asset creation without compromising quality become incredibly valuable.

The release of Hunyuan3D-PolyGen hints at a future where the relationship between human creativity and AI assistance becomes far more nuanced. Rather than replacing artists, this technology appears designed to handle the grunt work of creating 3D assets, freeing up talented creators to focus on the conceptual and creative challenges that humans excel at.

This represents a mature approach to AI integration in creative industries. Instead of the usual “AI will replace everyone” narrative, we’re seeing tools that augment human capabilities rather than attempt to replicate them entirely. The 70 percent efficiency improvement reported by Tencent’s teams suggests this philosophy is working in practice.

The broader implications are fascinating to consider. As these systems become more sophisticated and reliable, we might see a fundamental shift in how game development studios are structured and how projects are scoped. The technology could democratise high-quality asset creation, potentially allowing smaller studios to compete with larger operations that traditionally had resource advantages.

The success of Hunyuan3D-PolyGen could well encourage other major players to accelerate their own AI-assisted creative tools beyond generating 3D assets, potentially leading to a new wave of productivity improvements across the industry. For game developers who’ve been watching AI developments with a mixture of excitement and scepticism, this might be the moment when the technology finally delivers on its promises.

See also: UK and Singapore form alliance to guide AI in finance

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Hunyuan3D-PolyGen 3D资产 AI 游戏开发 腾讯
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