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QUASAR: QUality and Aesthetics Scoring with Advanced Representations
by
Babenko, Artem
, Kastryulin, Sergey
, Prokopenko, Denis
, Dylov, Dmitry V
in
Aesthetics
/ Image quality
/ Quality assessment
/ Quasars
/ Robustness
2024
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Do you wish to request the book?
QUASAR: QUality and Aesthetics Scoring with Advanced Representations
by
Babenko, Artem
, Kastryulin, Sergey
, Prokopenko, Denis
, Dylov, Dmitry V
in
Aesthetics
/ Image quality
/ Quality assessment
/ Quasars
/ Robustness
2024
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QUASAR: QUality and Aesthetics Scoring with Advanced Representations
Paper
QUASAR: QUality and Aesthetics Scoring with Advanced Representations
2024
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Overview
This paper introduces a new data-driven, non-parametric method for image quality and aesthetics assessment, surpassing existing approaches and requiring no prompt engineering or fine-tuning. We eliminate the need for expressive textual embeddings by proposing efficient image anchors in the data. Through extensive evaluations of 7 state-of-the-art self-supervised models, our method demonstrates superior performance and robustness across various datasets and benchmarks. Notably, it achieves high agreement with human assessments even with limited data and shows high robustness to the nature of data and their pre-processing pipeline. Our contributions offer a streamlined solution for assessment of images while providing insights into the perception of visual information.
Publisher
Cornell University Library, arXiv.org
Subject
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