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Papers/Pairwise Comparisons Are All You Need

Pairwise Comparisons Are All You Need

Nicolas Chahine, Sira Ferradans, Jean Ponce

2024-03-13Image Quality AssessmentAllFace Image Quality AssessmentNo-Reference Image Quality Assessment
PaperPDFCode(official)

Abstract

Blind image quality assessment (BIQA) approaches, while promising for automating image quality evaluation, often fall short in real-world scenarios due to their reliance on a generic quality standard applied uniformly across diverse images. This one-size-fits-all approach overlooks the crucial perceptual relationship between image content and quality, leading to a 'domain shift' challenge where a single quality metric inadequately represents various content types. Furthermore, BIQA techniques typically overlook the inherent differences in the human visual system among different observers. In response to these challenges, this paper introduces PICNIQ, a pairwise comparison framework designed to bypass the limitations of conventional BIQA by emphasizing relative, rather than absolute, quality assessment. PICNIQ is specifically designed to estimate the preference likelihood of quality between image pairs. By employing psychometric scaling algorithms, PICNIQ transforms pairwise comparisons into just-objectionable-difference (JOD) quality scores, offering a granular and interpretable measure of image quality. The proposed framework implements a deep learning architecture in combination with a specialized loss function, and a training strategy optimized for sparse pairwise comparison settings. We conduct our research using comparison matrices from the PIQ23 dataset, which are published in this paper. Our extensive experimental analysis showcases PICNIQ's broad applicability and competitive performance, highlighting its potential to set new standards in the field of BIQA.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingPIQ23KRCC0.62PICNIQ
Facial Recognition and ModellingPIQ23MAE0.72PICNIQ
Facial Recognition and ModellingPIQ23PLCC0.82PICNIQ
Facial Recognition and ModellingPIQ23SRCC0.81PICNIQ
Face ReconstructionPIQ23KRCC0.62PICNIQ
Face ReconstructionPIQ23MAE0.72PICNIQ
Face ReconstructionPIQ23PLCC0.82PICNIQ
Face ReconstructionPIQ23SRCC0.81PICNIQ
Face RecognitionPIQ23KRCC0.62PICNIQ
Face RecognitionPIQ23MAE0.72PICNIQ
Face RecognitionPIQ23PLCC0.82PICNIQ
Face RecognitionPIQ23SRCC0.81PICNIQ
3DPIQ23KRCC0.62PICNIQ
3DPIQ23MAE0.72PICNIQ
3DPIQ23PLCC0.82PICNIQ
3DPIQ23SRCC0.81PICNIQ
3D Face ModellingPIQ23KRCC0.62PICNIQ
3D Face ModellingPIQ23MAE0.72PICNIQ
3D Face ModellingPIQ23PLCC0.82PICNIQ
3D Face ModellingPIQ23SRCC0.81PICNIQ
3D Face ReconstructionPIQ23KRCC0.62PICNIQ
3D Face ReconstructionPIQ23MAE0.72PICNIQ
3D Face ReconstructionPIQ23PLCC0.82PICNIQ
3D Face ReconstructionPIQ23SRCC0.81PICNIQ

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