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BiRQA: Bidirectional Robust Quality Assessment for Images

About

Full-Reference image quality assessment (FR IQA) is important for image compression, restoration and generative modeling, yet current neural metrics remain slow and vulnerable to adversarial perturbations. We present BiRQA, a compact FR IQA metric model that processes four fast complementary features within a bidirectional multiscale pyramid. A bottom-up attention module injects fine-scale cues into coarse levels through an uncertainty-aware gate, while a top-down cross-gating block routes semantic context back to high resolution. To enhance robustness, we introduce Anchored Adversarial Training, a theoretically grounded strategy that uses clean "anchor" samples and a ranking loss to bound pointwise prediction error under attacks. On five public FR IQA benchmarks BiRQA outperforms or matches the previous state of the art (SOTA) while running ~3x faster than previous SOTA models. Under unseen white-box attacks it lifts SROCC from 0.30-0.57 to 0.60-0.84 on KADID-10k, demonstrating substantial robustness gains. To our knowledge, BiRQA is the only FR IQA model combining competitive accuracy with real-time throughput and strong adversarial resilience.

Aleksandr Gushchin, Dmitriy S. Vatolin, Anastasia Antsiferova• 2026

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentCSIQ
SRC0.967
138
Image Quality AssessmentLIVE
SRC0.977
96
Full Reference Image Quality AssessmentTID 2013
SRCC0.959
42
Full Reference Image Quality AssessmentCSIQ-IQA
SRCC0.979
40
Full Reference Image Quality AssessmentLIVE
PLCC0.989
33
Full Reference Image Quality AssessmentPieAPP
PLCC0.852
32
Full Reference Image Quality AssessmentPIPAL
PLCC0.837
30
Image Quality AssessmentTID 2013
PLCC0.925
15
2AFC Quality AssessmentBAPPS (test)
Clean Performance79.4
12
Image Quality AssessmentKADID-10K
SROCC (Clean)0.954
12
Showing 10 of 10 rows

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