Just Noticeable Difference for Large Multimodal Models
Zijian Chen, Yuan Tian, Yuze Sun, Wei Sun, Zicheng Zhang, Weisi Lin, Guangtao Zhai, Wenjun Zhang

TL;DR
This paper introduces LMM-JND, a new method to measure perceptual boundaries in large multimodal models, revealing significant visual blind spots and guiding future improvements for security and performance.
Contribution
It proposes LMM-JND and its pipeline, constructs the VPA-JND dataset, and uncovers perceptual limitations in current LMMs across multiple tasks.
Findings
LMMs struggle with basic comparison queries.
Significant gaps between LMMs and human visual perception.
Correlation between vision and language backbone designs.
Abstract
Just noticeable difference (JND), the minimum change that the human visual system (HVS) can perceive, has been studied for decades. Although recent work has extended this line of research into machine vision, there has been a scarcity of studies systematically exploring its perceptual boundaries across multiple tasks and stimulus types, particularly in the current era of rapidly advancing large multimodal models (LMMs), where studying the multifaceted capabilities of models has become a mainstream focus. Moreover, the perceptual defects of LMMs are not investigated thoroughly, resulting in potential security issues and suboptimal response efficiency. In this paper, we take an initial attempt and demonstrate that there exist significant visual blind spots in current LMMs. To systemically quantify this characteristic, we propose a new concept, {\bf LMM-JND}, together with its…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Data Visualization and Analytics · Face Recognition and Perception
