ABACUS: Adapting Unified Foundation Model for Bridging Image Count Understanding and Generation

· HF Daily Papers ·

ABACUS adapts a 3B unified vision-language model for counting-aware understanding and generation, reaching SOTA across seven counting benchmarks.

Categories: Research

Excerpt

Anindya Mondal, Sauradip Nag, Anjan Dutta — ABACUS is a unified vision-language model that handles object counting, crowd counting, referring-expression counting, and count-faithful image generation without any benchmark-specific training required. Our model is built on existing 3B-parameter unified foundation model and is adapted for object localization tasks using three key innovations: density-aware adaptive zooming with objectness maps for spatial grounding; a boundary-aware count policy via GRPO to eliminate crop-boundary errors; and a cycle-consistent GRPO strategy where the understanding branch self-critiques generated outputs, closing the understanding-generation gap without any external annotations. ABACUS achieves state-of-the-art results across seven benchmarks, outperforming both task-specific specialists and larger generalist models.