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Learning Conditional Knowledge Distillation for Degraded-Reference Image Quality Assessment

About

An important scenario for image quality assessment (IQA) is to evaluate image restoration (IR) algorithms. The state-of-the-art approaches adopt a full-reference paradigm that compares restored images with their corresponding pristine-quality images. However, pristine-quality images are usually unavailable in blind image restoration tasks and real-world scenarios. In this paper, we propose a practical solution named degraded-reference IQA (DR-IQA), which exploits the inputs of IR models, degraded images, as references. Specifically, we extract reference information from degraded images by distilling knowledge from pristine-quality images. The distillation is achieved through learning a reference space, where various degraded images are encouraged to share the same feature statistics with pristine-quality images. And the reference space is optimized to capture deep image priors that are useful for quality assessment. Note that pristine-quality images are only used during training. Our work provides a powerful and differentiable metric for blind IRs, especially for GAN-based methods. Extensive experiments show that our results can even be close to the performance of full-reference settings.

Heliang Zheng, Huan Yang, Jianlong Fu, Zheng-Jun Zha, Jiebo Luo• 2021

Related benchmarks

TaskDatasetResultRank
Full Reference Image Quality AssessmentDiffIQA (test)
Accuracy (Ref < Test)79.4
19
Full Reference Image Quality AssessmentPIPAL (test)
Accuracy79.8
19
Image Quality AssessmentSRIQA-Bench Generation-based
Accuracy64.3
19
Full Reference Image Quality AssessmentKADID-10k (test)
Accuracy80.1
19
Image Quality AssessmentSRIQA-Bench (All)
Accuracy59.1
19
Image Quality AssessmentSRIQA-Bench Regression-based
Accuracy76.7
19
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