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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Quality Assessment | CSIQ | SRC0.967 | 138 | |
| Image Quality Assessment | LIVE | SRC0.977 | 96 | |
| Full Reference Image Quality Assessment | TID 2013 | SRCC0.959 | 42 | |
| Full Reference Image Quality Assessment | CSIQ-IQA | SRCC0.979 | 40 | |
| Full Reference Image Quality Assessment | LIVE | PLCC0.989 | 33 | |
| Full Reference Image Quality Assessment | PieAPP | PLCC0.852 | 32 | |
| Full Reference Image Quality Assessment | PIPAL | PLCC0.837 | 30 | |
| Image Quality Assessment | TID 2013 | PLCC0.925 | 15 | |
| 2AFC Quality Assessment | BAPPS (test) | Clean Performance79.4 | 12 | |
| Image Quality Assessment | KADID-10K | SROCC (Clean)0.954 | 12 |