AI RESEARCH

ReasonEdit: Towards Interpretable Image Editing Evaluation via Reinforcement Learning

arXiv CS.CV

ArXi:2605.07477v1 Announce Type: new Recent text-guided image editing (TIE) models have achieved remarkable progress, however, many edited results still suffer from artifacts, unintended modifications, and suboptimal aesthetics. Although several benchmarks and evaluation methods have been proposed, most existing approaches rely on scalar scores and lack interpretability. This limitation largely stems from the absence of high-quality interpretation datasets for TIE and effective reward models to train interpretable evaluators. To address these challenges, we.