UniPercept: Towards Unified Perceptual-Level Image Understanding across Aesthetics, Quality, Structure, and Texture
By: Shuo Cao , Jiayang Li , Xiaohui Li and more
Potential Business Impact:
Teaches computers to judge picture beauty and detail.
Multimodal large language models (MLLMs) have achieved remarkable progress in visual understanding tasks such as visual grounding, segmentation, and captioning. However, their ability to perceive perceptual-level image features remains limited. In this work, we present UniPercept-Bench, a unified framework for perceptual-level image understanding across three key domains: Aesthetics, Quality, Structure and Texture. We establish a hierarchical definition system and construct large-scale datasets to evaluate perceptual-level image understanding. Based on this foundation, we develop a strong baseline UniPercept trained via Domain-Adaptive Pre-Training and Task-Aligned RL, enabling robust generalization across both Visual Rating (VR) and Visual Question Answering (VQA) tasks. UniPercept outperforms existing MLLMs on perceptual-level image understanding and can serve as a plug-and-play reward model for text-to-image generation. This work defines Perceptual-Level Image Understanding in the era of MLLMs and, through the introduction of a comprehensive benchmark together with a strong baseline, provides a solid foundation for advancing perceptual-level multimodal image understanding.
Similar Papers
Can Multimodal LLMs Solve the Basic Perception Problems of Percept-V?
Computation and Language
Tests if AI can see simple shapes and patterns.
Investigate the Low-level Visual Perception in Vision-Language based Image Quality Assessment
CV and Pattern Recognition
Makes AI better at seeing picture flaws.
The Perceptual Observatory Characterizing Robustness and Grounding in MLLMs
CV and Pattern Recognition
Tests how well AI sees and understands pictures.