DualPrim: Compact 3D Reconstruction with Positive and Negative Primitives
arXiv cs.CV / 3/18/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- DualPrim proposes a compact representation that uses positive and negative superquadrics to encode shapes.
- The additive–subtractive design enables topology-aware modeling of holes and concavities without sacrificing differentiability.
- It is embedded in a volumetric differentiable renderer, enabling end-to-end learning from multi-view images and seamless mesh export via a closed-form boolean difference.
- Empirically, DualPrim achieves state-of-the-art accuracy and produces outputs that are compact, structured, and more suitable for downstream editing and asset reuse than additive-only approaches.
Related Articles
The Honest Guide to AI Writing Tools in 2026 (What Actually Works)
Dev.to
Next-Generation LLM Inference Technology: From Flash-MoE to Gemini Flash-Lite, and Local GPU Utilization
Dev.to
The Wave of Open-Source AI and Investment in Security: Trends from Qwen, MS, and Google
Dev.to
How I built a 4-product AI income stack in 4 months (the honest version)
Dev.to
I stopped writing AI prompts from scratch. Here is the system I built instead.
Dev.to