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arxiv 2508.15773 v1 pith:KNKL2ZL2 submitted 2025-08-21 cs.CV cs.GRcs.LG

Scaling Group Inference for Diverse and High-Quality Generation

classification cs.CV cs.GRcs.LG
keywords groupinferencequalitycandidatediversityindependentmethodoutputs
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generative models typically sample outputs independently, and recent inference-time guidance and scaling algorithms focus on improving the quality of individual samples. However, in real-world applications, users are often presented with a set of multiple images (e.g., 4-8) for each prompt, where independent sampling tends to lead to redundant results, limiting user choices and hindering idea exploration. In this work, we introduce a scalable group inference method that improves both the diversity and quality of a group of samples. We formulate group inference as a quadratic integer assignment problem: candidate outputs are modeled as graph nodes, and a subset is selected to optimize sample quality (unary term) while maximizing group diversity (binary term). To substantially improve runtime efficiency, we progressively prune the candidate set using intermediate predictions, allowing our method to scale up to large candidate sets. Extensive experiments show that our method significantly improves group diversity and quality compared to independent sampling baselines and recent inference algorithms. Our framework generalizes across a wide range of tasks, including text-to-image, image-to-image, image prompting, and video generation, enabling generative models to treat multiple outputs as cohesive groups rather than independent samples.

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Cited by 5 Pith papers

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  2. STRIDE: Training-Free Diversity Guidance via PCA-Directed Feature Perturbation in Single-Step Diffusion Models

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  3. It's Never Too Late: Noise Optimization for Collapse Recovery in Trained Diffusion Models

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  4. Don't Settle at the Mode! Mitigating Diversity Collapse in Pretrained Flow Models via Feature Self-Guidance

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    Feature self-guidance disperses internal features of flow models during batch generation and applies manifold regularization to increase output diversity while preserving condition alignment.

  5. Composing People Together: Iterative Pose-Image Generation for Multi-Person Interaction Scenes

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