DisCo: Reinforcement with Diversity Constraints for Multi-Human Generation
This addresses the identity crisis in generative models for applications requiring realistic multi-human generation, representing a strong specific gain rather than an incremental improvement.
The paper tackled the problem of text-to-image models failing to generate diverse and accurate multi-human scenes by introducing DisCo, a reinforcement learning framework with diversity constraints, which achieved 98.6% Unique Face Accuracy and near-perfect Global Identity Spread on the DiverseHumans Testset.
State-of-the-art text-to-image models excel at realism but collapse on multi-human prompts - duplicating faces, merging identities, and miscounting individuals. We introduce DisCo (Reinforcement with Diversity Constraints), the first RL-based framework to directly optimize identity diversity in multi-human generation. DisCo fine-tunes flow-matching models via Group-Relative Policy Optimization (GRPO) with a compositional reward that (i) penalizes intra-image facial similarity, (ii) discourages cross-sample identity repetition, (iii) enforces accurate person counts, and (iv) preserves visual fidelity through human preference scores. A single-stage curriculum stabilizes training as complexity scales, requiring no extra annotations. On the DiverseHumans Testset, DisCo achieves 98.6 Unique Face Accuracy and near-perfect Global Identity Spread - surpassing both open-source and proprietary methods (e.g., Gemini, GPT-Image) while maintaining competitive perceptual quality. Our results establish DisCo as a scalable, annotation-free solution that resolves the long-standing identity crisis in generative models and sets a new benchmark for compositional multi-human generation.