fMRI Exploration of Visual Quality Assessment
Yiming Zhang, Ying Hu, Xiongkuo Min, Yan Zhou, Guangtao Zhai

TL;DR
This study uses fMRI to explore how the human brain processes images of varying quality, revealing different neural strategies and regions involved in assessing visual quality and complexity.
Contribution
It provides the first empirical neuroimaging evidence linking visual quality assessment to specific brain activity patterns and strategies.
Findings
High-quality images activate specialized visual areas.
Low-quality images recruit additional cognitive and attentional networks.
Quality assessment involves complex, adaptable neural processes.
Abstract
Despite significant strides in visual quality assessment, the neural mechanisms underlying visual quality perception remain insufficiently explored. This study employed fMRI to examine brain activity during image quality assessment and identify differences in human processing of images with varying quality. Fourteen healthy participants underwent tasks assessing both image quality and content classification while undergoing functional MRI scans. The collected behavioral data was statistically analyzed, and univariate and functional connectivity analyses were conducted on the imaging data. The findings revealed that quality assessment is a more complex task than content classification, involving enhanced activation in high-level cognitive brain regions for fine-grained visual analysis. Moreover, the research showed the brain's adaptability to different visual inputs, adopting different…
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Taxonomy
TopicsAdvanced Image Fusion Techniques
