PaAgent: Portrait-Aware Image Restoration Agent via Subjective-Objective Reinforcement Learning
arXiv cs.CV / 3/19/2026
💬 OpinionIdeas & Deep AnalysisTools & Practical UsageModels & Research
Key Points
- PaAgent is a portrait-aware image restoration agent that uses a self-evolving portrait bank and retrieval-augmented generation to select the best IR tool for a given input, leveraging multimodal models to perceive degradation.
- The portrait bank evolves by summarizing the characteristics of various IR tools with restored images, selected tools, and degraded inputs to inform future tool choices via retrieval.
- A subjective-objective reinforcement learning framework combines image quality scores with semantic insights to reward accurate degradation perception, enabling robust handling of partial and non-uniform degradation.
- Experiments across 8 IR benchmarks, including six single-degradation and eight mixed-degradation scenarios, validate PaAgent's superiority in addressing complex IR tasks; a project page is provided at the PaAgent site.