Search:
Match:
2 results

Analysis

This paper addresses the limitations of traditional Image Quality Assessment (IQA) models in Reinforcement Learning for Image Super-Resolution (ISR). By introducing a Fine-grained Perceptual Reward Model (FinPercep-RM) and a Co-evolutionary Curriculum Learning (CCL) mechanism, the authors aim to improve perceptual quality and training stability, mitigating reward hacking. The use of a new dataset (FGR-30k) for training the reward model is also a key contribution.
Reference

The FinPercep-RM model provides a global quality score and a Perceptual Degradation Map that spatially localizes and quantifies local defects.

Research#Agent🔬 ResearchAnalyzed: Jan 10, 2026 08:27

GenEnv: Co-Evolution of LLM Agents and Environment Simulators for Enhanced Performance

Published:Dec 22, 2025 18:57
1 min read
ArXiv

Analysis

The GenEnv paper from ArXiv explores an innovative approach to training LLM agents by co-evolving them with environment simulators. This method likely results in more robust and capable agents that can handle complex and dynamic environments.
Reference

The research focuses on difficulty-aligned co-evolution between LLM agents and environment simulators.